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Article

On-Orbit Geometric Calibration and Accuracy Validation of the Jilin1-KF01B Wide-Field Camera

1
Changchun Institute of Optics, Fine Mechanics and Physics, Chinese Academy of Sciences, Changchun 130033, China
2
University of Chinese Academy of Sciences, Beijing 101408, China
3
Chang Guang Satellite Technology Co., Ltd., Changchun 130000, China
4
State Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing, Wuhan University, Wuhan 430079, China
*
Author to whom correspondence should be addressed.
Remote Sens. 2024, 16(20), 3893; https://doi.org/10.3390/rs16203893
Submission received: 20 August 2024 / Revised: 30 September 2024 / Accepted: 12 October 2024 / Published: 19 October 2024

Abstract

:
On-orbit geometric calibration is key to improving the geometric positioning accuracy of high-resolution optical remote sensing satellite data. Grouped calibration with geometric consistency (GCGC) is proposed in this paper for the Jilin1-KF01B satellite, which is the world’s first satellite capable of providing 150-km swath width and 0.5-m resolution data. To ensure the geometric accuracy of high-resolution image data, the GCGC method conducts grouped calibration of the time delay integration charge-coupled device (TDI CCD). Each group independently calibrates the exterior orientation elements to address the multi-time synchronization issues between imaging processing system (IPS). An additional inter-chip geometric positioning consistency constraint is used to enhance geometric positioning consistency in the overlapping areas between adjacent CCDs. By combining image simulation techniques associated with spectral bands, the calibrated panchromatic data are used to generate simulated multispectral reference band image as control data, thereby enhancing the geometric alignment consistency between panchromatic and multispectral data. Experimental results show that the average seamless stitching accuracy of the basic products after calibration is better than 0.6 pixels, the positioning accuracy without ground control points(GCPs) is better than 20 m, the band-to-band registration accuracy is better than 0.3 pixels, the average geometric alignment consistency between panchromatic and multispectral data are better than 0.25 multispectral pixels, the geometric accuracy with GCPs is better than 2.1 m, and the geometric alignment consistency accuracy of multi-temporal data are better than 2 m. The GCGC method significantly improves the quality of image data from the Jilin1-KF01B satellite and provide important references and practical experience for the geometric calibration of other large-swath high-resolution remote sensing satellites.

1. Introduction

On 3 July, 2021, at 10:51 AM, the Jilin1-KF01B satellite was successfully launched from the Taiyuan Satellite Launch Center, Xinzhou, China. The Jilin1-KF01B sub-meter wide-field camera (Jilin1-KF01B WF camera) features a design with a large aperture, wide field of view, long focal length, and an off-axis three-mirror-anastigmat optical system. It is capable of providing push-broom images with a panchromatic resolution of 0.5 m, a multispectral resolution of 2 m, and a swath width greater than 150 km. Table 1 provides detailed information about the Jilin1-KF01B WF camera.
High-precision geometric positioning is fundamental to maximizing the performance and value of high-resolution satellites [1,2]. On-orbit geometric calibration is a crucial step in enhancing the geometric performance of high-resolution remote sensing satellites and is also a necessary procedure for satellite geometric correction processing [3]. Before the launch of the Jilin1-KF01B satellite, strict laboratory calibration was conducted on the onboard payloads. The two-dimensional high-precision interior orientation element calibration method for the linear array camera improved the reprojection error of the interior orientation element calibration in the laboratory to 0.34 pixels [4]. However, due to environmental changes during satellite launch and subsequent orbital operations, the status of the onboard measurement devices changed, rendering the laboratory calibration parameters inadequate to represent the satellite’s true on-orbit state. This discrepancy leads to a decline in the geometric positioning accuracy of optical images [5]. Therefore, using photogrammetric methods to precisely calibrate the interior and exterior orientation elements of the imaging system is crucial for providing accurate geometric imaging parameters, which are essential for the high-precision geometric processing of optical remote sensing images [2].
Geometric calibration of satellite imagery is crucial for ensuring geometric quality and positioning accuracy of the images. To improve the geometric calibration accuracy of satellite imagery, extensive research has been conducted and demonstrated the applicability of the look-angle model for high-resolution satellite geometric calibration both theoretically and experimentally [6]. By applying on-orbit geometric calibration, the geolocation accuracy without ground control points (GCPs) of international satellites is shown in the Table 2. The results indicate that in-orbit geometric calibration can significantly improve the geometric positioning accuracy of optical remote sensing satellite data.
The Jilin1-KF01B WF camera’s focal plane utilizes an array of multiple TDI CCDs mechanically staggered and stitched together, achieving an imaging swath width of 150 km. Adjacent CCDs capture images of the same ground target at different times, with varying satellite attitudes and viewing angles, making seamless stitching between adjacent CCDs a challenging task. To better compensate for image motion, multiple imaging processing system (IPS) are used, allowing for precise and independent control of TDI CCD timing across different fields of view. However, this design also introduces varying errors among the detectors within the different IPS. Additionally, the high-precision mapping requirements for wide-swath satellites demand greater geometric alignment consistency between panchromatic and multispectral data, necessitating further improvement through on-orbit geometric calibration. Consequently, traditional on-orbit geometric calibration methods are difficult to apply directly. Grouped calibration with geometric consistency (GCGC) method is proposed to address these challenges and achieve high-precision geometric positioning for the Jilin-1 KF01B WF camera data.
The main contributions of this study are as follows:
  • To achieve high-precision geometric positioning for satellites with large field-of-view and mechanically staggered multiple TDI CCDs, this paper proposes the Grouped Calibration with Geometric Consistency (GCGC) method. GCGC addresses the multi-timing synchronization issues among IPS by calibrating the TDI CCDs in groups, with each group undergoing independent exterior orientation element calibration.
  • The GCGC method improves the geometric positioning consistency between images from adjacent CCDs through an additional inter-chip geometric positioning consistency constraint. The GCGC method makes use of image simulation technology based on spectral band correlation [30], which enhances the geometric alignment consistency between panchromatic and multispectral data.
  • Through long-term, widely distributed on-orbit data, comprehensive geometric accuracy evaluation experiments were conducted from multiple perspectives. These evaluations provide important references and practical experience for the geometric calibration of other large-swath, high-resolution remote sensing satellites.
The rest of this paper is organized as follows. Section 2 introduces the on-orbit geometric calibration model of the Jilin1-KF01B WF camera, and provides a detailed explanation of the GCGC method and the practical processing workflow. Section 3 presents the on-orbit geometric calibration experimental results of the Jilin1-KF01B WF camera based on the GCGC method, and provides a detailed evaluation of the geometric accuracy of the data using on-orbit data. Section 4 summarizes the study’s conclusions based on detailed analysis.

2. Methods

2.1. Sub-Meter Wide-Field Camera On-Orbit Geometric Calibration Model

The Jilin1-KF01B WF camera employs a line-push-broom imaging method. Its rigorous geometric positioning model conforms to the central projection collinearity equation. Therefore, based on the collinearity equation and the principles of optical satellite push-broom imaging [31], and incorporating auxiliary data such as GPS measurements and satellite attitude measurements during the imaging process, a rigorous geometric positioning model has been constructed, as shown in Equation (1).
X Y Z = X s Y s Z s t + m R J 2000 W G S 84 R b o d y J 2000 t D x D y D z + d x d y d z + R c a m e r a b o d y x x 0 y y 0 f
In the above collinearity equation, X s Y s Z s t T represents the position vector of the GPS phase center at time t in the WGS84 coordinate system, R J 2000 W G S 84 t donates the rotation matrix from the J2000 coordinate system to the WGS84 coordinate system at time t, R b o d y J 2000 t donates the rotation matrix from the satellite body coordinate system to the J2000 coordinate system at time t, D x D y D z T is the coordinate of the GPS phase center in the satellite body coordinate system, d x d y d z T is the translation from the camera coordinate system origin to the satellite body coordinate system, R c a m e r a b o d y donates the rotation matrix from the camera coordinate system to the satellite body coordinate system. In Equation x x 0 y y 0 f T , x y T represents the coordinates of the current image point, x 0 y 0 T is the coordinates of the camera’s principal point. f is the camera’s focal length. X Y Z T represents the position vector of the point x y T in the WGS84 coordinate system.
The Jilin1-KF01B satellite, equipped with a sub-meter wide-field camera, has a complex imaging chain, leading to multiple geometric errors. These include camera installation errors, timing measurement errors, satellite attitude observation errors, GPS measurement errors, GPS eccentricity errors, image point errors due to internal camera distortions, and random errors introduced by the satellite’s dynamic motion during imaging. Current studies indicate that these errors are difficult to fully isolate. Therefore, on-orbit geometric calibration is divided into calibration of exterior orientation elements and interior orientation elements [32].
The essence of exterior orientation element calibration is to establish a compensation model for equipment installation errors and systematic errors during the attitude and trajectory measurement process. This model considers the characteristic of satellite imaging being dynamic, specifically accounting for attitude drift during motion. Consequently, a bias matrix model that incorporates temporal characteristics is used as the exterior orientation element calibration model, as shown in Equation (2). The sub-meter wide-field camera achieves extensive data coverage through the use of multiple stitched detectors, each covering areas with different ground speeds. This requires precise electronic image shift matching and row timing matching. The sub-meter wide-field camera utilizes multiple IPS to conduct fine row timing and image shift matching. Therefore, in the geometric calibration process, the entire camera cannot use a traditional uniform compensation model calibration strategy. Instead, it should calibrate the exterior orientation element compensation matrices for the detectors of different IPS separately.
R u v = a 1 a 2 a 3 b 1 b 2 b 3 c 1 c 2 c 3 = cos ( φ u + φ v t ) 0 sin ( φ u + φ v t ) 0 1 0 sin ( φ u + φ v t ) 0 cos ( φ u + φ v t ) 1 0 0 0 cos ( ω u + ω v t ) sin ( ω u + ω v t ) 0 sin ( ω u + ω v t ) cos ( ω u + ω v t ) cos κ u sin κ u 0 sin κ u cos κ u 0 0 0 1
The essence of the interior orientation element calibration model is to recover the true pointing direction of the imaging sensors in the satellite coordinate system. Therefore, the look-angle model can be used to express the interior orientation elements. The look-angle model, as depicted in Figure 1, indicates that the pointing angle of a pixel in the camera coordinate system can be represented by a specific formula, as shown in Equation (3).
tan ψ x = x f tan ψ y = y f
This paper utilizes a polynomial-based sensor look-angle model, which involves fitting a polynomial to the look-angle of each sensor element on each CCD within the camera’s coordinate system. Based on this look-angle model, and incorporating a bias matrix model that accounts for temporal characteristics, a rigorous geometric model for the sub-meter wide-field camera is developed. This model is detailed in Equations (4) and (5).
X Y Z = X s Y s Z s t + m R J 2000 W G S 84 R b o d y J 2000 t R u v R c a m e r a b o d y tan ψ x tan ψ y 1
tan ψ x = a 0 + a 1 s + a 2 s 2 + a i s i tan ψ y = b 0 + b 1 s + b 2 s 2 + b i s i

2.2. GCGC Method

The imaging chain of the sub-meter wide-field camera on the Jilin1-KF01B satellite is relatively complex, with various types of geometric errors that are difficult to completely separate. Although system errors within and outside the camera can be compensated for through the calibration of interior and exterior orientation elements, there is a strong correlation between these elements. If solved simultaneously, it is challenging to obtain reliable results. Therefore, a step-by-step iterative strategy is needed to solve the on-orbit geometric calibration parameters for the interior and exterior orientation elements. Additionally, a high-precision dense matching algorithm is employed to acquire densely and evenly distributed control points, thereby increasing the number of observation equations in the calibration model and improving the accuracy of the on-orbit geometric calibration parameter solution.
As shown in Figure 2, the Jilin1-KF01B WF camera employs a mechanical staggered arrangement of multiple TDI CCDs, achieving an imaging swath width of 150 km. Given the characteristics of independent control of TDI CCD timing by multiple IPS, as well as the practical data processing and application requirements, the wide-field camera is logically divided into six groups of cameras, each with a 25 km swath width, designated as PMS01-06 (Panchromatic and Multispectral Sensor). Within each logical camera group, the TDI CCDs are controlled by the same IPS for uniform image timing. In the GCGC method, the on-orbit geometric calibration is conducted separately for each logical camera unit.
The GCGC method focuses on two key aspects of geometric positioning consistency. One is the geometric positioning consistency in the overlapping areas between adjacent CCDs, and the other is the geometric positioning consistency between panchromatic data and multispectral data. The mechanical staggered arrangement of the TDI CCDs means that adjacent CCDs capture images of the same ground target under different times, different satellite attitudes, and viewing angles. Additionally, the overlapping regions between adjacent CCDs exhibit different distortion coefficients within the optical system. These factors significantly increase the difficulty of seamless internal field-of-view stitching between images from adjacent CCDs. To address the issue of misalignment in the stitching of images from the same region captured by adjacent CCDs, an on-orbit geometric calibration method with additional inter-chip geometric positioning consistency constraints is employed. The image captured by adjacent CCDs under different conditions should have consistent object-space geographic coordinates for the same region. By incorporating geometric positioning consistency constraints between image segments into the in-orbit geometric calibration model, the accuracy of interior orientation element calibration coefficients between adjacent CCDs is enhanced, enabling seamless stitching of images between adjacent CCDs. Based on this constraint, GCGC will perform dense matching of the same region’s image captured by adjacent CCDs during the calibration process to obtain inter-chip tie points. However, the image coordinates of tie points on different ground objects do not exhibit a uniform translation relationship but instead dynamically change with terrain fluctuations. Taking mountainous areas as an example (as shown in the Figure 3), it can be seen that the image row coordinate offset changes dynamically over a large range. Therefore, the GCGC algorithm designs a tie point matching method based on geometric positioning constraints for connection point extraction. Therefore, the GCGC algorithm designs a tie point matching method based on geometric positioning constraints for connection point extraction. As shown in Figure 4, first, a rigorous geometric model is established for each detector to solve for the conversion between image point coordinates and ground point coordinates, as well as the reverse conversion from ground point coordinates to image point coordinates. Then, based on geometric constraints, the algorithm extracts the overlapping region between adjacent detectors by selecting a series of points along the edges of the detectors. For each point, a rigorous geometric positioning model is established. By combining Digital Elevation Model (DEM) data, the coordinate transformation between adjacent detectors is realized according to x L   y L X   Y   Z x R 0   y R 0 , where x L and y L are the column and row coordinates of the image point in the image coordinate system of detector 1, and X, Y, and Z are the object space coordinate system corresponding to the image point. The x R 0 and y R 0 are the calculated column and row coordinates of the image point in the image coordinate system of detector 2. The mean value of the results for the point set is taken to obtain the along-track misalignment and cross-track overlap, thus extracting the overlapping region images. The feature points are extracted from the overlapping region images of detector 1, and these feature points are projected onto the overlapping region images of detector 2 through a rigorous geometric model to obtain the initial positioning coordinates. Finally, tie points are obtained through Fourier matching and least squares matching.
These tie points’ geographic coordinates are then calculated using rigorous geometric models of CCD respectively. These geographic coordinates are biased calculated values; therefore, based on the geometric positioning consistency condition, the average of the coordinates is taken as the object-space geographic coordinate to participate in the calibration coefficient calculation. These geographic coordinates are biased calculated values; therefore, based on the geometric positioning consistency condition, the coordinates X i Y i Z i T = X c c d ( i ) + X c c d ( i + 1 ) 2 Y c c d ( i ) + X c c d ( i + 1 ) 2 Z c c d ( i ) + Z c c d ( i + 1 ) 2 T is taken as the object-space geographic coordinate to participate in the calibration coefficient calculation.
Panchromatic and multispectral data share the same compensation model for installation errors, attitude, and orbit measurement errors, allowing them to be compensated using a unified set of exterior orientation calibration parameters. However, since different spectral bands are arranged at different positions on the focal plane, they each have independent interior orientation elements that require separate calibration. The panchromatic achieves its interior orientation calibration parameters and exterior orientation calibration parameters through absolute calibration. Considering that different spectral bands with the same resolution capture images of the same ground object from different imaging angles and attitudes due to their different positions on the focal plane, it is challenging to achieve high spectral band registration accuracy if each band is independently calibrated with control data. Therefore, the red spectral band can be selected as the reference band for absolute calibration with control data, while the other multispectral bands can be calibrated relative to the reference band using high-precision dense matching to obtain control points for solving the interior orientation calibration parameters.
Traditionally, multispectral reference band calibration has often used the same calibration strategy as the panchromatic band, where calibration is performed with control data. However, the resolution of multispectral data are often much lower than that of control data, and there is typically a time discrepancy between the acquisition of multispectral data and control data. Factors such as changes in ground objects and variations in solar elevation angle can lead to significant grayscale differences between images, making it difficult to match the multispectral reference band with control data, thereby reducing the number of matching points and the accuracy of the calibration parameters. Furthermore, the calibration process typically does not account for the geometric positioning consistency between the panchromatic and multispectral data. Poor geometric consistency between panchromatic and multispectral data can lead to color overflow issues in subsequent fusion products, necessitating additional matching between panchromatic and multispectral data during the fusion process. This increases the difficulty of fusion processing and places higher demands on the texture of the ground objects in the data, making the process time-consuming and labor-intensive.
To address these issues, the already calibrated panchromatic data can be used as control data for the interior parameter calibration of the multispectral reference band. This approach resolves the time discrepancy between multispectral data and traditional digital orthophoto map (DOM) control data, while also improving the geometric positioning consistency between panchromatic and multispectral data. However, differences in spectral response intensity, illumination intensity, and resolution between the panchromatic and multispectral reference band data pose challenges in extracting high-precision dense control points. To overcome this, the calibration algorithm proposed in this study uses simulated reference band data generated by the spectral correlation imaging simulation technique [30] based on the calibrated panchromatic data as control data for the interior parameter calibration of the multispectral reference band.
The detailed comparison of panchromatic data, original red band data, and simulated red (S-Red) band data at the same sampling resolution for three typical land cover types—urban areas, farmland, and mountainous regions—is shown in Figure 5. The comparison reveals that the original red band data and simulated red band data are closer in terms of gray-level distribution and clarity. This characteristic can increase the number and accuracy of matching points between the two, thereby enhancing calibration precision. A quantitative analysis of the three groups of images was conducted using four metrics: mean square error (MSE), histogram correlation (HC), blur value [33,34], and energy concentration [35]. MSE and HC are used to assess the gray-level distribution between the red band and panchromatic band, as well as between the red band and simulated red band. A smaller MSE indicates a closer gray-level distribution, while the HC closer to 1 signifies a higher correlation. The concentration blur value of and energy concentration are used to evaluate data clarity, the closer the values, the more similar the clarity. As shown in Table 3, the gray-level distribution and clarity of the red band and simulated red band are relatively close, whereas there are significant differences between the red band and the panchromatic band.

2.3. GCGC Process

The on-orbit geometric calibration process for the Jilin1-KF01B WF camera is shown in Figure 6 and Figure 7.
Absolute geometric calibration process for the panchromatic band using a Stepwise iterative method with additional inter-chip geometric positioning consistency constraints. The algorithm flow is shown in Algorithm 1:
Algorithm 1 Absolute geometric calibration process for the panchromatic band
Input:
  Orthorectified image data (DOM) of the calibration field;
  Digital Elevation Model (DEM) of the calibration field;
  Panchromatic data to be calibrated;
Output:
  Panchromatic on-orbit geometric calibration parameters;
1.   
Initial Model Construction: Use laboratory geometric calibration coefficients to construct the initial on-orbit geometric calibration model;
2.   
Calibration Region Selection and GCPs extraction: Select a calibration region within the image. Apply an image matching algorithm to perform high-precision dense matching between the image to be calibrated and control data, obtaining N control points uniformly distributed across the region. The control points have WGS84 geocentric Cartesian coordinates X i Y i Z i T and corresponding image coordinates x i y i T , i = 1 , 2 , 3 , , N ;
3.   
Matching Adjacent CCDs: For the same target region captured by adjacent CCDs within the calibration region, perform high-precision dense matching using an image matching algorithm, obtaining M control points with WGS84 geocentric Cartesian coordinates X i Y i Z i T and corresponding image coordinates ( x L i y L i ) , ( x R i y R i ) T , i = 1 , 2 , 3 , , M ;
4.   
Equation Transformation: Transform Equation (4) into Equation (6)
R J 2000 W G S 84 R b o d y J 2000 t 1 X X s Y Y s Z Z s t = m R u v R c a m e r a b o d y tan ψ x tan ψ y 1
5.   
Simultaneously, let X ˜ Y ˜ Z ˜ t = R J 2000 W G S 84 R b o d y J 2000 t 1 X X s Y Y s Z Z s t and x ˜ y ˜ z ˜ = R c a m e r a b o d y tan ψ x tan ψ y 1 in combination with Equation (2), derive Equation (7):
f x = a 1 x ˜ + a 2 y ˜ + a 3 z ˜ c 1 x ˜ + c 2 y ˜ + c 3 z ˜ X ˜ Z ˜ f y = b 1 x ˜ + b 2 y ˜ + b 3 z ˜ c 1 x ˜ + c 2 y ˜ + c 3 z ˜ Y ˜ Z ˜
6.   
Exterior Calibration Coefficient Estimation: Treat the current interior calibration coefficients as “true values.” Linearize Equation (7) based on the on-orbit geometric calibration model, establish the error equations, solve for the exterior calibration coefficients φ u ω u κ u φ v ω v T , and update the geometric calibration model;
7.   
Interior Calibration Coefficient Estimation: Treat the estimated exterior calibration coefficients as “true values.” Linearize Equation (7) based on the on-orbit geometric calibration model, establish the error equations, solve for the interior calibration coefficients, and update the geometric calibration model;
8.   
Iterative Calculation: Repeat steps (6) and (7) until the calibration coefficients for the interior and exterior orientation elements converge and stabilize, at which point the iterative calculation can stop;
9.   
Model Parameter Update: Use the calculated calibration coefficients for the interior and exterior orientation elements to update the geometric positioning model parameters for the panchromatic band.
Geometric calibration process for the multispectral reference band using a stepwise iterative method with additional inter-chip geometric positioning consistency constraints. The algorithm flow is shown in Algorithm 2:
Algorithm 2 Geometric calibration process for the multispectral reference band
Input:
  Panchromatic on-orbit geometric calibration parameters;
  Panchromatic data;
  Digital Elevation Model (DEM) of the calibration field;
  Multispectral reference band data to be calibrated;
Output:
  Multispectral reference band on-orbit geometric calibration parameters
1.   
Reference Band Selection: Choose one band from the blue, green, or red bands as the reference band for multispectral calibration. In this paper, the red band is selected as the reference;
2.   
Simulated Data Generation: Based on the selected reference band, use the already calibrated panchromatic image data to generate simulated reference band data using a band correlation method;
3.   
Geometric Correction: Perform geometric correction on the simulated reference band data to obtain the control data for the simulated reference band.
4.   
Initial Model Construction: Construct the initial on-orbit geometric calibration model;
5.   
Calibration Region Selection and GCPs extraction: Select a calibration region within the image. Apply an image matching algorithm to perform high-precision dense matching between the image to be calibrated and the control data for the simulated reference band, obtaining N control points with WGS84 geocentric Cartesian coordinates X i Y i Z i T and corresponding image coordinates x i y i T , i = 1 , 2 , 3 , , N ;
6.   
Matching Adjacent CCDs: For the same target region captured by adjacent CCDs within the calibration region, perform high-precision dense matching using an image matching algorithm, obtaining M control points with WGS84 geocentric Cartesian coordinates X i Y i Z i T and corresponding image coordinates ( x L i y L i ) , ( x R i y R i ) T , i = 1 , 2 , 3 , , M ;
7.   
Interior Calibration Coefficient Estimation: Treat the exterior calibration coefficients from the panchromatic band calibration as "true values." Use the on-orbit geometric calibration model to solve for the interior calibration coefficients and update the geometric calibration model;
8.   
Iterative Calculation: Repeat step (7) until the calibration coefficients for the interior orientation elements converge and stabilize, at which point the iterative calculation can stop;
9.   
Model Parameter Update: Use the calculated interior orientation element calibration coefficients to update the geometric positioning model parameters for the corresponding multispectral reference band.
The relative geometric calibration process for non-reference multispectral bands follows similar steps as for the reference band. During this process, use the already calibrated reference band data as control data and sequentially execute steps (4) through (9).

3. Results and Discussion

3.1. Experimental Data

To verify the correctness of the calibration model and method presented in this paper, an on-orbit geometric calibration experiment was conducted on the Jilin1-KF01B WF camera. The experimental data for on-orbit geometric calibration is located in the South Asian region (34.05°N–34.27°N, 64.13°E–66.57°E), and the data acquisition information is shown in the “On-orbit Geometric Calibration” section of Table 4 and the calibration data illustrated in Figure 8. The on-orbit geometric calibration coefficients obtained were used for basic data production. The geometric accuracy of the basic data was comprehensively evaluated through experiments on geometric accuracy, positioning accuracy with GCPs, and geometric consistency across multiple temporal datasets. The relevant data information of geometric accuracy is provided in “Basic Products Geometric Accuracy” section of Table 4. The data acquisition period spans from 17 August 2021, to 9 June 2024, and the geographic coordinates of the data center point are shown in Table A1. The geometric correction with GCPs experiment was conducted using 10 scenes data in Lanzhou (36.03°N, 103.73°E), Zhangye (38.93°N, 100.45°E), Jiuquan (39.74°N, 98.51°E), Jiayuguan (39.77°N, 98.27°E), Wuwei (37.93°N, 102.64°E), and Baiyin (36.54°N, 104.18°E) in Gansu Province. The multi-temporal data geometric positioning consistency experiment used 34 scenes of data distributed across Gansu (103.55°E–104.17°E, 35.73°N–36.35°N), Linyi (118.32°E–118.96°E, 35.63°N–35.07°N), Qingdao (120.08°E–120.64°E, 36.06°N–36.62°N), and Xinjiang (87.14°E–87.86°E, 44.24°N–43.65°N).

3.2. Calibration Results of Jilin1-KF01B WF Camera

Based on the TDI CCD grouping rules described earlier, the on-orbit geometric calibration was performed for the data of each band within the six groups using the GCGC method. The geometric positioning residuals after calibration are shown in Table 5, the band-to-band registration accuracy for the multispectral bands is presented in Table 6, and the image stitching between adjacent CCDs before and after calibration is shown in Figure 9. The calibration results indicate that due to the presence of non-linear geometric distortions in the original camera parameters, there was a significant misalignment between images captured by adjacent CCDs, which could not meet the high-precision geometric stitching requirements for multi-CCD images. After the on-orbit calibration of the exterior orientation elements, the installation errors in the geometric calibration model were corrected. The on-orbit calibration of the interior orientation elements with additional inter-chip geometric positioning consistency constraints effectively eliminated the internal non-linear distortions of the camera, achieving consistent geometric positioning accuracy across all CCD images and seamless stitching between adjacent CCDs. The RMSE (Root Mean Square Error) of the calibration residuals in both row and column directions for the entire spectrum was better than 0.16 pixels. Additionally, the relative calibration between multispectral bands eliminated geometric positioning errors between the bands, with a registration accuracy better than 0.1 pixels. The geometric positioning consistency between panchromatic and multispectral data are shown in Table 7, where the RMSE for geometric positioning consistency in the column direction was better than 0.19 multispectral pixels, in the row direction better than 0.21 multispectral pixels, and the overall planar consistency better than 0.28 multispectral pixels. The calibration residuals for the red band based on panchromatic data and simulated red band data are shown in Table 8. This demonstrates that using the simulated red band data, based on the calibrated panchromatic band, as control data for the multispectral reference band achieved high-precision geometric positioning consistency between the panchromatic and multispectral data.

3.3. Basic Products Geometric Accuracy Evaluation

The geometric accuracy of the calibration data used for solving on-orbit geometric calibration parameters was analyzed earlier. To ensure the reliability and applicability of the calibration parameter results, the geometric accuracy of basic product data from the Jilin1-KF01B satellite during its on-orbit operation was verified. The on-orbit calibration parameters obtained were used as input for the production of basic data products. For this study, 20 orbits of data were randomly selected from August 2021 to June 2024 to test the seamless stitching accuracy, RPC fitting accuracy, positioning accuracy without GCPs, band-to-band registration accuracy, and geometric positioning consistency between panchromatic and multispectral data for the sub-meter WF camera. The experimental data covered different regions of the world, with acquisition times and angles as shown in the “ Basic Products Geometric Accuracy “ section of Table 4. Additionally, 10 scenes covering PMS01-06 in Gansu Province were selected for geometric correction with GCPs experiments to evaluate the absolute positioning accuracy after control points correction. The acquisition times and angles are shown in Table 9. Finally, multi-temporal data from Gansu, Linyi, Qingdao, and Xinjiang regions were used to verify the geometric positioning consistency accuracy across multiple periods using bundle adjustment. The acquisition times and angles are shown in the Table 10.

3.3.1. In-Scene Stitching Accuracy Evaluation of Basic Products

For PMS01-06, rigorous geometric models were constructed using the calibration coefficients for each detector, and matching points were obtained through image matching in the overlapping regions of adjacent detectors. The reprojection error RMSE of matching points for the same ground object between adjacent detectors was used to evaluate the stitching accuracy of the basic products. The acquisition times and angles of the experimental data are shown in the “ Basic Products Geometric Accuracy “ section of Table 4, and the statistical results are presented in Figure 10. The circular points in the figure represent the distribution of the RMSE of stitching accuracy for each scene of the grouped cameras. The outer contour lines in the figure illustrate the distribution of data RMSE, with wider contour line intervals indicating regions where the RMSE is concentrated along the y-axis, while narrower contour lines indicate areas with fewer data points along the y-axis. The figure shows that the rigorous geometric model constructed using the calibration coefficients achieved stitching accuracy better than 1 pixel in both row and column directions for all logical cameras, with an average RMSE better than 0.6 pixels, achieving sub-pixel seamless stitching between adjacent CCD images.

3.3.2. RPC Fitting Accuracy Evaluation of Basic Products

During basic product production, the rigorous geometric model was used to generate corresponding RPC coefficients, which serve as the geometric positioning model for basic products. The accuracy of these coefficients directly affects geometric positioning accuracy without and with GCPs of basic products. Satellites like IKONOS have achieved fitting accuracy RMSE better than 0.01 pixels [1]. In this study, the rigorous geometric model was used to calculate object-space virtual control points, which were projected into the image space using the RPC coefficients, and the errors in the X and Y directions were evaluated. The acquisition times and angles of the experimental data are shown in the “Basic Products Geometric Accuracy” section of Table 4. The distribution of RPC coefficient fitting accuracy to the rigorous geometric model data are shown in Figure 11, where the mean fitting accuracy in the X direction was better than 0.000025 pixels, and RMSE better than 0.000031 pixels, while in the Y direction, the mean fitting accuracy was better than 0.0002 pixels, and RMSE better than 0.00023 pixels. This fitting accuracy, better than 0.0003 pixels, indicates that the RPC coefficients accurately fit the rigorous geometric model based on the calibration coefficients, allowing the RPC geometric positioning accuracy of basic products to accurately reflect the original satellite positioning accuracy.

3.3.3. Positioning Accuracy Without GCPs and Band-to-Band Registration Accuracy Evaluation of Basic Products

Basic data achieves geometric positioning through RPC coefficients. By performing automatic dense matching between the experimental data and reference images, uniformly distributed match points were obtained, and the positioning results of these match points based on RPC coefficients were used to evaluate positioning accuracy without GCPs. Additionally, the band-to-band registration accuracy for multispectral images in the experimental data was assessed by automatically performing dense matching between the red band (used as the reference) and the blue, green, and near-infrared (NIR) bands, with the deviations in the along-track and cross-track directions of the match points being statistically analyzed. The acquisition times and angles of the experimental data are shown in the “Basic Products Geometric Accuracy “ section of Table 4, and the statistical results are presented in Table A1. Table A1 shows that after on-orbit geometric calibration, the positioning accuracy without GCPs of basic product data improved from around 1 km to within 20 m in most cases, and remained stable over time, with band-to-band registration accuracy better than 0.3 pixels.

3.3.4. Geometric Positioning Consistency Accuracy Evaluation Between Panchromatic and Multispectral Data of Basic Products

This paper proposes using simulated multispectral data based on the calibrated panchromatic image as control data for calibrating the multispectral reference band to improve geometric positioning consistency between panchromatic and multispectral data. High-precision dense matching between panchromatic and multispectral data was performed to obtain matching point data, and the projection error of matching points combined with RPC coefficients was used to evaluate the geometric positioning consistency between panchromatic and corresponding multispectral data. The acquisition times and angles of the experimental data are shown in the “Basic Products Geometric Accuracy” section of Table 4, and the statistical results are presented in Figure 12. The figure shows that the geometric positioning consistency RMSE for all data in all logical cameras ranges from 0.13 to 0.32 multispectral pixels, with a mean RMSE better than 0.25 multispectral pixels, achieving high-precision geometric positioning consistency between panchromatic and multispectral data.

3.3.5. Positioning Accuracy with GCPs Evaluation of Basic Products

When using remote sensing image data for high-precision mapping, control points are needed to further eliminate geometric positioning errors in the data, making positioning accuracy with GCPs a crucial factor in determining whether remote sensing image data can be used for high-precision mapping. A geometric correction with GCPs experiment was conducted using 10 scenes data in Lanzhou, Zhangye, Jiuquan, Jiayuguan, Wuwei, and Baiyin in Gansu Province, with high-precision control data. The acquisition times and angles are shown in Table 9, and the distribution of control points is shown in Figure 13. The number of control points and the statistical results of controlled geometric accuracy are shown in Table 9. The experiment used the RPC image affine transformation model as the geometric correction model (as shown in Equation (8)). The results indicate that the controlled accuracy of the basic products produced by the Jilin1-KF01B satellite, using the on-orbit geometric calibration coefficients, was better than 2.1 m in urban, agricultural, and mountainous areas, meeting the requirements for 1:5000 scale mapping.
x + a 0 + a 1 x + a 2 y = R P C x ( l a t , l o n , h ) y + b 0 + b 1 x + b 2 y = R P C y ( l a t , l o n , h )

3.3.6. Multi-Temporal Data Geometric Positioning Consistency Accuracy Evaluation of Basic Products

The wide-swath characteristics of the Jilin1-KF01B satellite enable it to acquire data with high frequency, multiple time phases, and multiple viewing angles. Therefore, the geometric positioning consistency accuracy of multi-temporal standard image products is a key metric for evaluating applications such as target extraction and change detection across multiple periods. The geometric positioning consistency accuracy of multi-temporal data was evaluated using data from four regions: Gansu, Linyi, Qingdao, and Xinjiang, covering both plain and mountainous terrains. The geographic distribution of experimental data are shown in Figure 14, and the acquisition times and angles of the 34 scenes of experimental data are shown in Table 10. In each experiment, based on the overlap relationships between the multi-temporal data, corresponding range DOM (Digital Orthophoto Map) and DEM (Digital Elevation Model) data were obtained as control data to extract control points. Additionally, tie points between overlapping images were extracted using a matching algorithm, and these control and tie points were used in a bundle adjustment based on the RPC image affine transformation model to correct the RPC model coefficients for each image. The geometric positioning consistency accuracy of each image was then calculated using the tie points.
The geometric positioning consistency accuracy of multi-temporal basic products requires determining the tie points and their observation dimensions for each image. Suppose image A has “n” connection points, each with “m” observation dimensions; the geometric positioning consistency error for each tie point can be calculated using Equation (9), where X p , Y p represents the object-space coordinates of tie point “p” in image A (in UTM coordinate system), and X p i , Y p i represents the object-space coordinates of tie point “p” in image B (in UTM coordinate system). After obtaining the geometric positioning consistency errors for all tie points, the geometric positioning consistency accuracy of the image can be calculated using Equation (10). The geographic distribution of experimental data are shown in Figure 14, and the experimental results are shown in Table 10, the effect of geometric positioning consistency before and after correction art shown in Figure 15, Figure 16, Figure 17 and Figure 18, indicating that the original geometric positioning consistency accuracy (OGPCA) is about from 3 m to 11 m, and the new geometric positioning consistency accuracy (NGPCA)after bundle adjustment in all experimental groups was better than 2 m, achieving high-precision geometric positioning consistency across multiple periods.
Δ p = i = 1 m 1 ( X p X p i ) 2 + ( Y p Y p i ) 2 m 1
ξ = p = 1 n Δ p 2 n

4. Conclusions

On-orbit geometric calibration is a crucial prerequisite to ensure the practical application of the Jilin1-KF01B satellite. This paper, based on the sub-meter wide-field camera’s characteristics—large aperture, wide field of view, independent control of TDI CCD timing by multiple IPS, and the use of ultra-multi-chip TDI CCD mechanical staggered stitching—presents a detailed introduction to the GCGC method. The method employs a stepwise iterative strategy to solve for exterior and interior calibration elements separately, with a particular focus on the independent time control among multiple IPS. In response to this situation, the wide-field camera is logically grouped, with exterior orientation elements calibrated independently for each group, enhancing data positioning accuracy through independent exterior orientation correction. Additionally, an inter-chip geometric positioning consistency constraint is applied to improve the geometric positioning consistency in the overlapping areas between adjacent CCDs, enabling seamless stitching of adjacent CCD images. For the absolute calibration of the multispectral reference band data, the GCGC process involves simulating multispectral reference band data as control data, which is generated using a band correlation-based image simulation algorithm from the calibrated panchromatic data. This approach reduces the difficulty of control point extraction for the multispectral reference band data in traditional calibration algorithms and improves geometric positioning consistency between panchromatic and multispectral band data. The grouping calibration strategy in the proposed GCGC method is suitable for wide-swath satellites. The geometric positioning consistency constraint between adjacent detectors is not limited to such satellites, it is also applicable to optical satellites with mechanically spliced detectors. Furthermore, the method based on simulated spectral bands can be widely applied to all optical satellites.
A series of comprehensive geometric accuracy validation experiments were conducted on the long-term basic products of the Jilin1-KF01B satellite. The results show that after on-orbit geometric calibration, the average seamless stitching accuracy is better than 0.6 pixels, achieving sub-pixel level stitching, RPC fitting accuracy was better than 0.0003 pixels, positioning accuracy without GCPs was better than 20 m (CE90), band-to-band registration accuracy was better than 0.3 pixels, the geometric positioning consistency accuracy between panchromatic and multispectral data was better than 0.25 multispectral pixels, geometric correction accuracy with GCPs was better than 2.1 m, and the geometric positioning consistency accuracy across multiple periods was better than 2 m. These experimental results demonstrate that the GCGC method proposed in this paper is reasonable and effective, significantly improving the geometric positioning accuracy of the Jilin1-KF01B WF camera, proving that the basic products can meet the requirements for high-precision mapping and data application needs.

Author Contributions

Conceptualization, H.W. and G.C.; methodology, H.W. and Y.B.; validation, H.W., Y.P., Q.B., S.H. and F.F.; investigation, Y.B. and X.Z.; resources, X.Z. and H.S.; data curation, Y.P. and Q.B.; writing—original draft preparation, H.W.; writing—review and editing, H.W.; visualization, H.W. and S.H.; project administration, H.S., X.Z. and L.Z.; funding acquisition, X.Z. and Y.B. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by Changbai Mountain Young Elite Talent Program, grant number BZ2022030301.

Data Availability Statement

No new data were created or analyzed in this study. Data sharing is not applicable to this article.

Conflicts of Interest

Authors Hongyu Wu, Yang Bai, Ying Peng, Qianqian Ba, Shuai Huang, Xing Zhong, Lei Zhang and Fuyu Feng were employed by the company Chang Guang Satellite Technology Co., Ltd. The remaining authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Appendix A

Table A1 summarizes the central geographic coordinates of 120 pairs of data obtained from on-orbit geometric calibration parameters based on the GCGC method, and provides the positioning accuracy without GCPs as well as the band-to-band registration accuracy among multispectral data.
Table A1. The statistics of positioning accuracy without GCPs and the band-to-band registration accuracy.
Table A1. The statistics of positioning accuracy without GCPs and the band-to-band registration accuracy.
IDGroup IDCentral Longitude and LatitudePositioning Accuracy without GCPs (meters)Band-to-Band Registration Accuracy after Calibration (pixels)
LongitudeLatitudeBefore
Calibration
After
Calibration
Red-BlueRed-GreenRed-NIR
Cross-Track Along-TrackCross-TrackAlong-Track Cross-Track Along-Track
1PMS01−49.8695−25.7476925.176.830.0580.0610.0530.0560.1940.216
PMS02−49.2812−24.3115915.2412.910.0610.0640.0460.0460.1560.171
PMS03−49.0342−24.3603900.8616.170.0570.0600.0450.0470.1650.181
PMS04−48.7376−24.1929891.2818.120.0610.0660.0490.0520.1860.212
PMS05−48.4869−24.2407931.9017.090.0640.0700.0470.0500.1650.183
PMS06−48.2339−24.2853912.4317.050.0420.0440.0290.0290.1130.119
2PMS01−101.721037.3772903.527.060.0270.0270.0250.0260.1010.109
PMS02−101.440037.3290922.184.330.0300.0300.0270.0270.1090.114
PMS03−101.160037.2804928.437.060.0280.0270.0250.0250.1110.114
PMS04−100.880037.2311921.178.030.0290.0280.0260.0250.1080.109
PMS05−100.600037.1810904.768.490.0310.0300.0280.0270.1130.117
PMS06−100.321037.1305913.428.290.0300.0280.0260.0230.0770.071
3PMS01111.750038.2888891.2414.030.0680.0720.0590.0620.1660.167
PMS02112.036038.2393907.5019.800.0620.0640.0510.0510.1520.150
PMS03112.322038.1901878.6523.690.0450.0480.0380.0380.1630.176
PMS04112.607038.1402896.1321.340.0520.0540.0430.0430.1680.163
PMS05112.893038.0895892.8822.230.0510.0560.0410.0430.1560.161
PMS06113.177038.0381904.8222.390.0480.0580.0380.0420.1400.142
4PMS01−85.976033.9310903.8515.650.0840.0820.0720.0680.1710.167
PMS02−85.653034.0943916.6516.590.0780.0810.0690.0670.1860.191
PMS03−85.441033.8219918.0213.750.0750.0750.0700.0640.1890.189
PMS04−85.002634.4065905.6212.070.0820.0820.0700.0670.1710.164
PMS05−85.013433.2838910.4117.170.0760.0760.0630.0590.1780.180
PMS06−84.340434.7174908.5721.210.0800.0810.0660.0620.1640.154
5PMS0156.603236.7781965.9539.100.0320.0320.0240.0240.0610.061
PMS0257.216237.9843970.1738.210.0530.0570.0310.0330.0740.072
PMS0357.500637.9399957.1740.080.0560.0590.0330.0330.0730.066
PMS0457.780937.8902963.8440.060.0530.0590.0330.0360.0650.063
PMS0557.719836.6066951.4235.430.0280.0270.0220.0220.0410.048
PMS0657.709735.5238959.2528.730.0390.0380.0280.0260.0270.026
6PMS01115.911040.7808923.605.390.0570.0620.0390.0420.0820.083
PMS02115.900039.7075919.359.770.0510.0550.0350.0390.0760.074
PMS03116.549040.8880932.9910.340.0610.0620.0400.0400.1060.108
PMS04116.347039.1887950.569.270.0690.0770.0480.0550.0720.067
PMS05116.755039.5424925.595.200.0750.0830.0490.0540.0780.080
PMS06117.426040.7341988.088.670.0550.0560.0370.0370.1140.114
7PMS01113.765029.7692944.538.240.0660.0660.0740.0670.2020.191
PMS02113.138025.9369931.098.890.0670.0680.0810.0730.2040.193
PMS03113.578026.7168954.6912.910.0760.0770.0870.0820.1980.186
PMS04114.539029.6273978.8515.410.0560.0570.0550.0530.1960.201
PMS05114.799029.57601005.4512.150.0570.0570.0570.0510.1460.132
PMS06115.061029.5277991.3911.140.0640.0640.0660.0590.1680.149
8PMS01−49.9453−8.6080949.2113.240.0700.0740.0550.0600.1820.209
PMS02−50.2669−11.3475954.3516.110.0730.0810.0510.0570.1580.181
PMS03−49.4169−8.2815938.4312.370.0920.1010.0660.0690.1490.148
PMS04−49.4422−9.5728945.0614.260.0720.0760.0590.0590.1470.148
PMS05−48.9681−8.3691942.8013.370.1060.1180.0660.0680.1530.153
PMS06−48.7429−8.4126936.1611.370.1030.1140.0640.0630.1530.153
9PMS01106.408039.2100959.167.550.0460.0420.0380.0320.1520.145
PMS02106.582038.7373949.887.640.0650.0690.0560.0570.1920.186
PMS03107.731041.6466937.458.090.0340.0330.0260.0250.0810.073
PMS04108.029041.5941946.148.580.0400.0390.0290.0280.1060.101
PMS05107.698039.4598939.563.880.0370.0380.0310.0310.1090.118
PMS06108.300040.4499941.417.560.0330.0330.0230.0240.0720.078
10PMS01113.089031.1257942.8610.470.0630.0650.0590.0590.1950.206
PMS02114.262034.6828947.984.680.0890.0990.0770.0840.1800.187
PMS03113.670031.2467947.4612.300.0740.0730.0720.0670.1870.173
PMS04114.698034.1625936.935.920.0680.0710.0540.0550.1750.155
PMS05115.374035.5943928.9310.700.0660.0700.0530.0550.1500.137
PMS06115.243034.0617923.478.540.0730.0810.0560.0580.1760.158
11PMS01118.949034.4785909.2515.040.0480.0540.0410.0460.1110.106
PMS02119.483035.4579928.7310.080.0520.0630.0390.0490.1080.108
PMS03118.745031.5122915.278.030.0560.0570.0540.0540.1820.190
PMS04119.744034.3367918.8910.320.0510.0500.0450.0410.1770.166
PMS05120.009034.2875913.9312.410.0500.0490.0480.0410.1790.146
PMS06120.107033.6233912.329.870.0570.0570.0460.0440.1470.145
12PMS01117.339033.3438937.337.010.0530.0540.0570.0550.1570.141
PMS02117.659033.5040919.278.630.0490.0530.0540.0550.1590.145
PMS03117.931033.4745926.657.940.0470.0520.0490.0500.1480.136
PMS04118.196033.4255907.8010.290.0500.0510.0470.0460.1520.142
PMS05118.464033.3930920.4111.950.0340.0370.0380.0400.1100.112
PMS06118.726033.3436925.979.780.0250.0250.0240.0240.0690.071
13PMS01118.185034.8946863.366.330.0810.0860.0590.0640.1690.157
PMS02118.450034.8483922.378.650.0780.0830.0560.0580.1910.167
PMS03118.716034.7966928.6611.130.0740.0790.0510.0550.2020.184
PMS04118.983034.7488936.6710.680.0760.0900.0580.0710.1960.190
PMS05119.251034.6943944.5910.570.0700.0800.0550.0620.1490.148
PMS06119.521034.6449968.9213.160.0510.0520.0420.0430.1390.148
14PMS01118.236033.4411915.8613.180.0680.0710.0750.0710.2190.210
PMS02118.657034.0131947.9610.950.0870.0950.0760.0780.2180.212
PMS03118.923033.9701871.0110.320.0790.0840.0740.0730.2270.219
PMS04119.134033.7160920.2411.470.0890.0920.0760.0750.2410.235
PMS05119.399033.6744911.5713.080.0730.0740.0720.0700.2120.211
PMS06119.606033.4203928.2913.720.0680.0720.0710.0710.2170.219
15PMS01118.456037.2542865.1416.860.0660.0770.0580.0640.1890.175
PMS02118.733037.2055921.1916.780.0570.0650.0500.0550.1730.162
PMS03119.015037.1816914.4911.910.0510.0550.0400.0450.1790.191
PMS04119.288037.1324913.7514.630.0390.0420.0320.0340.1500.153
PMS05119.567037.1044923.7914.360.0450.0480.0390.0410.1680.177
PMS06119.836037.0546918.1914.730.0720.0870.0600.0710.1860.171
16PMS01117.312035.8074889.4410.530.0800.0830.0640.0660.1730.165
PMS02118.945040.6145902.497.640.0860.0950.0590.0630.1050.108
PMS03119.226040.5571903.808.960.0820.0900.0560.0600.1350.140
PMS04119.513040.5128888.488.350.0840.0920.0570.0600.1320.135
PMS05119.801040.4609893.519.570.0960.1070.0640.0680.1650.177
PMS06120.088040.4098907.3511.640.0890.0970.0640.0670.1710.166
17PMS01118.695036.7780958.367.050.1220.1290.0820.0850.1520.172
PMS02118.207033.7786956.617.270.0720.0770.0530.0560.1590.149
PMS03118.477033.7334910.516.350.0610.0660.0490.0510.1960.200
PMS04118.746033.6844923.006.420.0690.0730.0550.0530.1530.141
PMS05119.018033.6436932.994.290.0770.0810.0560.0570.1860.188
PMS06119.286033.5937935.507.390.0610.0630.0480.0500.1700.168
18PMS01118.172036.9991874.047.050.0910.1120.0590.0770.1230.119
PMS02117.324032.7071905.2210.180.0820.0910.0680.0730.2020.193
PMS03117.573032.6353886.609.140.0690.0750.0560.0600.1930.206
PMS04117.830032.5891903.5210.100.0720.0780.0600.0630.1600.155
PMS05119.078036.1847901.459.870.0720.0810.0510.0590.1110.101
PMS06118.341032.4639897.448.000.0790.0850.0590.0620.1890.189
19PMS01117.129034.5434912.8419.900.0620.0670.0550.0580.1930.189
PMS02117.505034.9116898.8914.000.0770.0840.0630.0670.2030.197
PMS03117.774034.8587910.0412.490.0750.0800.0600.0620.1960.184
PMS04118.045034.8105889.9712.460.0850.0930.0680.0730.2100.199
PMS05118.202034.3356899.4114.760.0720.0790.0630.0630.2140.201
PMS06118.589034.7046905.3917.390.0740.0750.0590.0570.2210.195
20PMS01118.099034.6793894.496.590.0830.0880.0670.0700.2000.182
PMS02118.358034.6340895.904.450.0680.0690.0520.0520.1590.138
PMS03118.615034.5860893.387.000.0640.0740.0450.0490.1890.184
PMS04118.874034.5396929.685.360.0660.0760.0540.0560.1900.189
PMS05119.133034.4890902.905.710.0680.0830.0540.0600.1420.138
PMS06119.393034.4414918.476.490.0650.0780.0560.0570.1840.196
Figure A1 shows the variation trend of positioning accuracy without GCPs over time for PMS01-PMS06 after GCGC geometric calibration.
Figure A1. Positioning accuracy without GCPs of PMS01-PMS06.
Figure A1. Positioning accuracy without GCPs of PMS01-PMS06.
Remotesensing 16 03893 g0a1aRemotesensing 16 03893 g0a1b

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Figure 1. The diagram of detector look-angle model.
Figure 1. The diagram of detector look-angle model.
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Figure 2. CCD stitching and overlap imaging characteristics schematic diagram.
Figure 2. CCD stitching and overlap imaging characteristics schematic diagram.
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Figure 3. Illustration of the large-scale dynamic variation of the y-coordinate differences in mountainous areas.
Figure 3. Illustration of the large-scale dynamic variation of the y-coordinate differences in mountainous areas.
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Figure 4. Tie point matching method based on geometric positioning constraints for connection point extraction.
Figure 4. Tie point matching method based on geometric positioning constraints for connection point extraction.
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Figure 5. Comparison of detailed images of typical land cover types for panchromatic data, red band data, and simulated red band data.
Figure 5. Comparison of detailed images of typical land cover types for panchromatic data, red band data, and simulated red band data.
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Figure 6. Jilin1-KF01B WF camera on-orbit geometric calibration of panchromatic and multispectral reference band flow chart.
Figure 6. Jilin1-KF01B WF camera on-orbit geometric calibration of panchromatic and multispectral reference band flow chart.
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Figure 7. Jilin1-KF01B WF camera on-orbit geometric calibration of multispectral non-reference band flow chart.
Figure 7. Jilin1-KF01B WF camera on-orbit geometric calibration of multispectral non-reference band flow chart.
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Figure 8. Calibration data.
Figure 8. Calibration data.
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Figure 9. Comparison of geometric stitching before and after calibration.
Figure 9. Comparison of geometric stitching before and after calibration.
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Figure 10. In-Scene stitching accuracy.
Figure 10. In-Scene stitching accuracy.
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Figure 11. RPC fitting accuracy.
Figure 11. RPC fitting accuracy.
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Figure 12. Geometric positioning consistency accuracy between panchromatic and multispectral data.
Figure 12. Geometric positioning consistency accuracy between panchromatic and multispectral data.
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Figure 13. The distribution of GCPs in experimental regions.
Figure 13. The distribution of GCPs in experimental regions.
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Figure 14. Geographic distribution of experimental data.
Figure 14. Geographic distribution of experimental data.
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Figure 15. The effect of geometric positioning consistency before and after correction of GanSu data.
Figure 15. The effect of geometric positioning consistency before and after correction of GanSu data.
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Figure 16. The effect of geometric positioning consistency before and after correction of LinYi data.
Figure 16. The effect of geometric positioning consistency before and after correction of LinYi data.
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Figure 17. The effect of geometric positioning consistency before and after correction of QingDao data.
Figure 17. The effect of geometric positioning consistency before and after correction of QingDao data.
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Figure 18. The effect of geometric positioning consistency before and after correction of XinJiang data.
Figure 18. The effect of geometric positioning consistency before and after correction of XinJiang data.
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Table 1. Main parameters of the Jilin1-KF01B WF camera.
Table 1. Main parameters of the Jilin1-KF01B WF camera.
Jilin1-KF01B WF CameraParameter
Camera TypeLinear Array TDI CCD Push-Broom Camera
Detector Mosaicking MethodMechanical Staggered
Optical SystemOff-Axis Three-Mirror-Anastigmat Optical System
Quantization Bit Depth12 bit
Swath Width150 km
SNR>100:1
Spectral RangePanchromatic450 nm~800 nm
Blue450 nm~510 nm
Green519 nm~580 nm
Red630 nm~690 nm
Near-Infrared (NIR) 770 nm~895 nm
Spatial Resolution of Data ProductsPanchromatic0.5 m
Multispectral2 m
MTFPanchromatic>0.16
Multispectral>0.28
Table 2. Geometric positioning accuracy without GCPs after on-orbit geometric calibration.
Table 2. Geometric positioning accuracy without GCPs after on-orbit geometric calibration.
CountrySatelliteGeolocation Accuracy without GCPs
FranceSPOT [7,8,9]50 m
Pléiades 1A [10]10 m
Pléiades 1B [10,11]4.5 m
Pléiades Neo [12]5 m
AmericaIKONOS [1,13,14]12 m
OrbView-3 [15]10 m
GeoEye-1 [16,17]4 m
WorldView-1 [18]4 m
WorldView-2 [17]4 m
WorldView-3 [19]4 m
ChinaZY3-01 [20]20 m
ZY3-02 [21]10 m
ZY-1 02C [22]100 m
Gaofen-4 [23,24]1 pixel
Gaofen-5 [25]60 m
Gaofen-6 [26]3 pixels
Luojia-1 01 [27]650 m
Zhuhai-1 [28]1.5 pixels
GaoFen-14 [29]1.24 m
Table 3. Statistical table of similarity evaluation parameters for typical land cover images.
Table 3. Statistical table of similarity evaluation parameters for typical land cover images.
Land Cover TypesComparison GroupMSEHCBlur ValueEnergy Concentration
PANRedS-RedPANRedS-Red
Urban areasRed and PAN0.01210.96300.3400.7810.7670.9630.0870.127
Red and S-Red 0.00170.9870
Farmland areasRed and PAN0.01030.89600.3950.5200.5870.8690.5380.431
Red and S-Red0.00150.9837
Mountainous areasRed and PAN0.02830.90430.3260.4790.5260.9510.6260.501
Red and S-Red 0.00220.9868
Table 4. Experimental data information.
Table 4. Experimental data information.
ExperimentIDImaging TimeImage Angle (°)
RollPitchYaw
On-orbit Geometric Calibration12021-07-280.000.003.21
Basic Products Geometric Accuracy12021-08-173.00−0.183.40
22021-09-020.000.003.07
32021-09-120.000.003.06
42021-12-233.00−0.173.17
52022-02-18−3.000.173.17
62022-03-063.00−0.152.93
72022-04-092.99−0.183.52
82022-05-281.81−0.123.69
92022-08-20−3.000.163.13
102022-11-17−0.140.013.27
112022-12-310.000.003.29
122023-01-20−2.990.183.39
132023-03-293.00−0.173.21
142023-07-05−1.000.063.28
152023-08-16−3.000.173.17
162023-10-273.00−0.163.08
172024-01-28−0.500.033.20
182024-02-173.00−0.183.36
192024-05-132.99−0.183.41
202024-06-091.20−0.073.23
Table 5. The statistics of on-orbit calibration residual.
Table 5. The statistics of on-orbit calibration residual.
Group IDBandGeometric Positioning Residuals After Calibration (pixel)
Column DirectionRow Direction
MaxMinRMSEMaxMinRMSE
PMS01Pan−0.366257−0.0000080.145391−0.3713040.0000030.144718
Blue−0.5643520.0000020.1269190.557150−0.0000010.129533
Green−0.5301570.0000010.102103−0.533769−0.0000010.103027
Red0.2645720.0000000.1000680.262534−0.0000030.098821
NIR0.5345560.0000010.0864260.5189250.0000000.087164
PMS02Pan−0.801025−0.0000060.1596980.441153−0.0000050.146380
Blue−0.5284870.0000020.100682−0.6075420.0000010.096686
Green0.5045800.0000010.073226−0.5501790.0000010.073398
Red−0.315732−0.0000060.132981−0.278999−0.0000090.116255
NIR−0.547901−0.0000000.102177−0.5560960.0000010.099198
PMS03Pan0.4546670.0000030.1472960.496185−0.0000010.142020
Blue0.5122090.0000000.0788410.546872−0.0000010.077803
Green−0.5092490.0000000.056408−0.496459−0.0000000.058658
Red0.390876−0.0000120.1413040.2795520.0000120.139158
NIR0.480456−0.0000000.063747−0.519422−0.0000000.063199
PMS04Pan0.485560−0.0000000.1458640.425948−0.0000000.143750
Blue−0.477041−0.0000000.0549090.541585−0.0000010.049627
Green0.462559−0.0000000.0378150.475999−0.0000000.035560
Red0.3600660.0000020.1387810.3360340.0000040.139590
NIR0.4902910.0000030.0586980.4702960.0000010.053294
PMS05Pan−0.486315−0.0000050.147013−0.420472−0.0000050.139291
Blue0.538902−0.0000010.0787870.5506560.0000010.075120
Green−0.538176−0.0000000.064479−0.5240890.0000000.062171
Red0.3709300.0000050.1395590.312009−0.0000130.137802
NIR0.5335370.0000000.064541−0.5315520.0000010.060180
PMS06Pan−0.718997−0.0000040.1518240.647674−0.0000000.151632
Blue−0.538045−0.0000010.0918010.6048790.0000010.093526
Green−0.514802−0.0000010.0689050.5017470.0000000.067017
Red0.357659−0.0000060.1400000.3835800.0000050.139645
NIR−0.541270−0.0000010.0908760.531835−0.0000010.094335
Table 6. The statistics of the band-to-band registration accuracy of calibration images.
Table 6. The statistics of the band-to-band registration accuracy of calibration images.
Group IDBand-to-Band Registration Accuracy (pixel)
Reference BandTest BandCross-Track DirectionAlong-Track Direction
PMS01RedBlue0.0473690.042034
Green0.0378280.033754
NIR0.0991540.091168
PMS02RedBlue0.0427120.040210
Green0.0319120.029589
NIR0.1049930.092015
PMS03RedBlue0.0408040.035482
Green0.0292300.025333
NIR0.0936540.082061
PMS04RedBlue0.0406690.036317
Green0.0275550.024206
NIR0.0949670.080833
PMS05RedBlue0.0378100.034158
Green0.0278130.023955
NIR0.0655630.055794
PMS06RedBlue0.0490550.047041
Green0.0342150.030350
NIR0.0820130.069267
Table 7. The statistics of geometric positioning consistency accuracy between panchromatic and multispectral data for calibration data.
Table 7. The statistics of geometric positioning consistency accuracy between panchromatic and multispectral data for calibration data.
Group IDGeometric Positioning Consistency (Multispectral Pixel)
Column Direction RMSERow Direction RMSEPlane RMSE
PMS010.1050.1330.169
PMS020.1780.1470.231
PMS030.1470.1440.206
PMS040.1630.1240.205
PMS050.1430.1380.199
PMS060.1890.2030.277
Table 8. Statistical results of calibration residuals comparison for the red band based on panchromatic data and simulated red band data.
Table 8. Statistical results of calibration residuals comparison for the red band based on panchromatic data and simulated red band data.
Group IDRed Band Calibration Residual RMSE (Pixels)
Panchromatic Data as Control DataSimulated Red Data as Control Data
xMaxxRMSEyMAXyRMSExMaxxRMSEyMAXyRMSE
PMS010.5970.1380.7350.1300.2860.1110.2720.105
PMS020.8160.2140.5640.1450.3160.1330.2790.116
PMS031.1700.2681.7490.2650.3910.1410.2800.139
PMS040.8690.2481.2810.2890.3600.1390.3360.140
PMS051.6940.2481.2020.2660.3710.1400.3120.138
PMS060.8270.2591.3570.2800.3580.1400.3840.140
Table 9. The statistics of positioning accuracy with GCPs.
Table 9. The statistics of positioning accuracy with GCPs.
IDImaging TimeImage Angle (°)Group IDGCPsPlane RMS (meter)
RollPitchYaw
LanZhou 12022-04-033.00−0.163.06PMS051671.90
ZhangYe 12022-04-243.00−0.163.07PMS03361.98
ZhangYe 22022-06-17−3.000.162.99PMS01941.51
ZhangYe 32022-06-17−3.000.162.98PMS02721.81
JiuQuan 12022-07-070.40−0.023.00PMS04922.00
ZhangYe 42022-07-070.40−0.023.00PMS041302.08
JiuQuan 22022-07-070.40−0.023.00PMS051251.58
JiaYuguan 12023-04-08−2.290.123.10PMS051331.63
WuWei 12023-09-12−3.000.173.21PMS06882.09
BaiYin 12023-10-303.00−0.173.17PMS061101.82
Table 10. The statistics of geometric positioning consistency accuracy for multi-temporal data.
Table 10. The statistics of geometric positioning consistency accuracy for multi-temporal data.
Experimental AreaFeature TypeImaging TimeImage Angle (°)IDGroup IDOGPCA
(meters)
NGPCA
(meters)
RollPitchYaw
GanSuMountain2024-02-113.00−0.163.101PMS035.5211.350
2024-04-10−1.910.103.122PMS035.4081.435
2021-12-221.06−0.063.153PMS035.0781.295
2023-03-042.99−0.183.374PMS064.9371.490
2023-03-042.99−0.183.375PMS055.4901.227
2023-08-273.00−0.173.196PMS055.8150.847
2023-08-273.00−0.173.197PMS055.9811.565
2023-10-303.00−0.173.178PMS017.4791.565
2023-07-163.00−0.173.259PMS0210.5461.932
LinYiPlain2023-03-293.00−0.173.211PMS023.9571.293
2023-03-293.00−0.173.212PMS023.2791.377
2024-01-28−0.500.033.203PMS037.0961.878
2024-01-28−0.500.033.204PMS023.5220.933
2023-08-16−3.000.173.175PMS023.9801.153
2024-02-173.00−0.183.366PMS044.3211.237
2024-02-173.00−0.183.367PMS043.5011.263
2024-05-132.99−0.183.418PMS067.5971.499
QingDaoPlain2023-05-230.000.003.271PMS035.4731.687
2024-05-140.50−0.033.392PMS019.7681.555
2021-12-301.18−0.063.083PMS064.1921.165
2023-11-120.38−0.023.244PMS064.0691.056
2023-11-120.38−0.023.245PMS053.9810.847
2023-12-062.00−0.113.096PMS053.5091.003
2023-12-062.00−0.113.097PMS053.3520.918
2023-07-05−1.000.053.128PMS053.4520.942
2023-07-05−1.000.053.129PMS029.3231.440
XinJiangMountain2023-05-100.98−0.053.001PMS028.1911.975
2023-05-100.98−0.053.002PMS035.6091.289
2023-07-27−1.000.052.753PMS043.4501.197
2021-11-200.000.002.784PMS016.3920.968
2022-04-060.000.003.075PMS016.2111.001
2022-06-210.73−0.042.756PMS014.6881.066
2023-08-04−0.310.022.897PMS045.4381.026
2023-08-04−0.310.022.898PMS045.7001.021
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Wu, H.; Chen, G.; Bai, Y.; Peng, Y.; Ba, Q.; Huang, S.; Zhong, X.; Sun, H.; Zhang, L.; Feng, F. On-Orbit Geometric Calibration and Accuracy Validation of the Jilin1-KF01B Wide-Field Camera. Remote Sens. 2024, 16, 3893. https://doi.org/10.3390/rs16203893

AMA Style

Wu H, Chen G, Bai Y, Peng Y, Ba Q, Huang S, Zhong X, Sun H, Zhang L, Feng F. On-Orbit Geometric Calibration and Accuracy Validation of the Jilin1-KF01B Wide-Field Camera. Remote Sensing. 2024; 16(20):3893. https://doi.org/10.3390/rs16203893

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Wu, Hongyu, Guanzhou Chen, Yang Bai, Ying Peng, Qianqian Ba, Shuai Huang, Xing Zhong, Haijiang Sun, Lei Zhang, and Fuyu Feng. 2024. "On-Orbit Geometric Calibration and Accuracy Validation of the Jilin1-KF01B Wide-Field Camera" Remote Sensing 16, no. 20: 3893. https://doi.org/10.3390/rs16203893

APA Style

Wu, H., Chen, G., Bai, Y., Peng, Y., Ba, Q., Huang, S., Zhong, X., Sun, H., Zhang, L., & Feng, F. (2024). On-Orbit Geometric Calibration and Accuracy Validation of the Jilin1-KF01B Wide-Field Camera. Remote Sensing, 16(20), 3893. https://doi.org/10.3390/rs16203893

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