A New Method for Acquisition of High-Resolution Seabed Topography by Matching Seabed Classification Images
Abstract
:1. Introduction
2. MBES and SSS Images
3. Superposition of SSS Images and MBES Terrain
3.1. Acquisitions of Sediment Images
3.2. Segmental Matching Based on Sediment Distributions and Features
- (1)
- Geocode the MBES sediment image of a survey line according to instantaneous locations of MBES transducer.
- (2)
- Geocode the SSS sediment image in the same water region as the MBES sediment image according to the instantaneous estimation locations of SSS towfish.
- (3)
- Select a segment of SSS sediment image with m × n along the survey line, and determine the co-located and slightly larger than m × n MBES image segment from the MBES sediment image when considering the positional error. The segment principle is discussed in Section 5.4.
- (4)
- Extract the common feature point pairs and match the two image segments by the SURF algorithm [28]. A detailed process includes the following steps:
- (a)
- Detect the feature points from the MBES image segment and the corresponding SSS one using SURF.
- (b)
- Describe each feature point with a multidimensional vector.
- (c)
- Match the feature points according to the nearest vector distance of different feature points.
- (d)
- Use random sample consensus (RANSAC) algorithm to check the consistencies of the angles and distances of the matching vector pairs to eliminate mismatching.
- (5)
- Repeat steps 3–4 until the matchings in all segments are carried out.
- (1)
- Select a random subset of the matching point pairs and named it as the hypothetical inliers.
- (2)
- Calculate the relative geo-distance distribution model, namely the mean and twice the standard deviation of the relative positional deviation from the set of hypothetical inliers. If the absolute value of the relative geo-distance distribution model is more than the given geo-distance parameter as mentioned the above, the hypothetical inliers will be given up and go back to step 1; otherwise, continue to step 3.
- (3)
- All other matching point pairs are tested against the relative geo-distance distribution model. The points that fit the estimated model well are considered as part of the consensus set.
- (4)
- The model is reasonable if sufficient matching pairs have been classified as part of the consensus set. In addition, the model may be improved by re-estimating it using all members of the set.
3.3. Position Correction of SSS Images Using Thin-Plate Splines
3.4. Superimposition of SSS Images and MBES Terrain
4. Experiment and Analysis
4.1. Data Acquisition
4.2. Superimposition of SSS Image and MBES Terrain
- (1)
- (2)
- Good consistence between the SSS images and MBES terrains is achieved at the three targets at different positions of the measurement area, and verifying that the segmental matching in consideration of time-varying positional accuracy of SSS towfish is appropriate.
4.3. Matching Accuracy
5. Discussion
5.1. Necessity to Superimpose SSS Image on MBES Terrain
5.2. Possible Features Used in the Matching
- (1)
- Seabed terrain: Both MBES and SSS images are 2D images. Topographic variations may not be reflected in the 2D images. Thus, seabed terrain cannot be used as a feature in the matching.
- (2)
- Seabed sediment variation: Although MBES and SSS images have significant differences in the initial emission energy level, acoustic frequency, and bean pattern, both MBES and SSS images can reflect the variations and distributions of common seabed sediments. These studies proved that seabed sediments can be classified using MBES and SSS BS data [20,35]. Therefore, the sediment variations in MBES and SSS images can be used as common features in the matching of the two types of images.
- (3)
- Seabed targets: Based on the imaging mechanisms of SSS and MBES, large seabed targets should appear in both of the sonar images in theory. However, considering that SSS images have higher resolution and SNR than MBES images, some small seabed targets can be displayed in SSS images, but not in MBES images. According to the principle of sediment classification, the same targets that appear in the two sonar images can also be displayed in their sediment images and used as common features in the matching.
- (4)
5.3. Influencing Factors on the Matching
5.4. Size of Matching Segment
- (1)
- At least five feature point pairs should be included in the segmental images to guarantee calculation accuracy of transformation.
- (2)
- Setting small size matching segment is necessary to weaken the effect of time-varying errors.
5.5. Applications
6. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
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Max Deviation (m) | Mean Deviation (m) | Standard Deviation (±m) | |
---|---|---|---|
Raw data | 23.00 | 9.11 | 11.87 |
Rigid transformation | 15.00 | 3.33 | 3.80 |
TPS | 6.00 | 2.50 | 0.67 |
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Zhao, J.; Meng, J.; Zhang, H.; Yan, J. A New Method for Acquisition of High-Resolution Seabed Topography by Matching Seabed Classification Images. Remote Sens. 2017, 9, 1214. https://doi.org/10.3390/rs9121214
Zhao J, Meng J, Zhang H, Yan J. A New Method for Acquisition of High-Resolution Seabed Topography by Matching Seabed Classification Images. Remote Sensing. 2017; 9(12):1214. https://doi.org/10.3390/rs9121214
Chicago/Turabian StyleZhao, Jianhu, Junxia Meng, Hongmei Zhang, and Jun Yan. 2017. "A New Method for Acquisition of High-Resolution Seabed Topography by Matching Seabed Classification Images" Remote Sensing 9, no. 12: 1214. https://doi.org/10.3390/rs9121214
APA StyleZhao, J., Meng, J., Zhang, H., & Yan, J. (2017). A New Method for Acquisition of High-Resolution Seabed Topography by Matching Seabed Classification Images. Remote Sensing, 9(12), 1214. https://doi.org/10.3390/rs9121214