Instantaneous Extraction of Indoor Environment from Radar Sensor-Based Mapping
Abstract
:1. Introduction
- The proposed method removes the ghost targets generated by the multiple reflections of radio waves and extracts the structure of the indoor environment.
- The proposed method not only removes general ghost targets, but also performs partial interpolation of the unmeasured areas, resulting in an extracted structure of the indoor environment that closely resembles the actual environment.
- Unlike conventional methods for structure extraction, the proposed method does not require parameter adjustments in different environments and can extract the structure of an indoor environment using the same parameter settings.
2. Radar Signal Analysis
2.1. Distance and Velocity Estimation Using FMCW Radar Signal
2.2. Angle Estimation Using MIMO Antenna System
3. Indoor Environment Mapping Using Radar Sensor
3.1. Radar Sensor Used in Measurements
3.2. Measurement Environment
3.3. Target Detection Results
4. Proposed Environment Extraction Method
4.1. Conditional GAN for Environment Extraction
4.1.1. Basic Structure of Conditional GAN
4.1.2. Structure of Proposed Method
5. Performance Evaluation
5.1. Performance Evaluation of the Proposed Method
5.2. Comparison between the Proposed Method and Conventional Methods
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
CAU | Chung-Ang University |
CGAN | Conditional generative adversarial network |
DBSCAN | Density-based spatial clustering of applications with noise |
FOV | Field of view |
FMCW | Frequency-modulated continuous wave |
GAN | Generative adversarial network |
KAU | Korea Aerospace University |
KNN | k-nearest neighbor |
MIMO | Multiple-input and multiple-output |
ReLU | Rectified linear unit |
SC | Structural content |
SSIM | Structural similarity index measure |
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Detection Mode | Long-Range Mode | Short-Range Mode |
---|---|---|
Bandwidth, B (GHz) | 1.5 | 3 |
The number of chirps, | 256 | 256 |
The number of time samples, | 128 | 128 |
Maximum detectable range (m) | 20 | 10 |
Range resolution (m) | 0.1 | 0.05 |
FOV (∘) |
Parameter | Value |
---|---|
The size of generator input layer | 3 |
The size of generator output layer | 3 |
Activation function of generator | ReLU |
The size of discriminator input layer | 3 |
The size of discriminator output layer | 1 |
Activation function of discriminator | ReLU |
The number of training dataset | 5000 |
The number of epochs | 100 |
Measurement Environment | E1 | E2 | E3 |
---|---|---|---|
Proposed method | 0.9530 | 0.9562 | 0.9653 |
KNN algorithm | 0.9036 | 0.9485 | 0.9361 |
Hough transform | 0.8711 | 0.9388 | 0.9852 |
DBSCAN | 0.8971 | 0.9463 | 0.9359 |
Measurement Environment | E1 | E2 | E3 |
---|---|---|---|
Proposed method | 0.9935 | 0.9987 | 1.0001 |
KNN algorithm | 0.9822 | 0.9927 | 0.9832 |
Hough transform | 0.9896 | 0.9852 | 0.9855 |
DBSCAN | 0.9836 | 0.9930 | 0.9833 |
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Cho, S.; Kwak, S.; Lee, S. Instantaneous Extraction of Indoor Environment from Radar Sensor-Based Mapping. Remote Sens. 2024, 16, 574. https://doi.org/10.3390/rs16030574
Cho S, Kwak S, Lee S. Instantaneous Extraction of Indoor Environment from Radar Sensor-Based Mapping. Remote Sensing. 2024; 16(3):574. https://doi.org/10.3390/rs16030574
Chicago/Turabian StyleCho, Seonmin, Seungheon Kwak, and Seongwook Lee. 2024. "Instantaneous Extraction of Indoor Environment from Radar Sensor-Based Mapping" Remote Sensing 16, no. 3: 574. https://doi.org/10.3390/rs16030574
APA StyleCho, S., Kwak, S., & Lee, S. (2024). Instantaneous Extraction of Indoor Environment from Radar Sensor-Based Mapping. Remote Sensing, 16(3), 574. https://doi.org/10.3390/rs16030574