Precise Motion Compensation of Multi-Rotor UAV-Borne SAR Based on Improved PTA
Abstract
:1. Introduction
2. Materials and Methods
2.1. Principle of Motion Compensation
2.2. Spectrum of Signal with Errors
2.3. The Calculations of Accurate Errors in the Two-Dimensional Frequency Domain
- (1)
- Select a point at the two-dimensional spectrum: We select a point on the two-dimensional spectrum, assuming it is located at the azimuth frequency and range frequency .
- (2)
- Update the relationship between and at = : For range frequency , a curve illustrating the relationship between and can be obtained based on Equation (6). This curve is similar to the one shown in Figure 2b, corresponding to the function = G(, ).
- (3)
- Interpolate the azimuth stationary phase time: For the point located at (, ), is the azimuth stationary phase time corresponding to the azimuth frequency . Based on the curve corresponding to the function = G(, ), we can obtain by interpolation.
- (4)
- Calculate the precise error in Equation (11): After obtaining the stationary phase time , and can be further obtained by interpolation. Then, can be obtained.
- (5)
- Calculate the complete error in the two-dimensional frequency domain: Repeat Steps 1–4 to calculate the errors at each frequency point in the two-dimensional frequency domain.
- (6)
- Perform Stolt interpolation on : The is the actual error in the two-dimensional frequency domain before Stolt interpolation. To obtain the actual error after imaging, Stolt interpolation needs to be performed on .
2.4. An Improved PTA for Refocusing Building Surfaces
- (1)
- Motion compensation: OSA is performed on the RAW data to compensate for range-varying motion errors. After performing MOCO using the OSA, the residual error is generally small and therefore does not destroy the one-to-one relationship between and .
- (2)
- Azimuthal resampling is performed to eliminate errors due to non-uniform sampling.
- (3)
- The ω-k algorithm is used for imaging to produce SAR images. At this stage, ground targets in the SAR images are well-focused, while building targets are severely defocused.
- (4)
- A pixel point is selected, N pixel points are taken along the range and azimuth directions centered on this pixel point to obtain the local SAR image. Based on practical experience, N is typically set to 64 or 128.
- (5)
- A two-dimensional fast Fourier transform (FFT) is performed on the selected local SAR image to obtain the signal in the two-dimensional frequency domain.
- (6)
- Based on the position of the pixels selected in Step 4 and combined with the elevation data, the exact error as described in Equation (11) is calculated according to the method proposed in this paper.
- (7)
- Phase compensation is performed in the two-dimensional frequency domain and the two-dimensional inverse fast Fourier transform (IFFT) is performed to obtain focused local SAR images. At this stage, the center of the local image is well-focused.
- (8)
- The pixel selected in Step 4 is replaced with the center pixel of the focused local image obtained in Step 7.
- (9)
- The next pixel is selected and the above process is repeated until all pixels are processed.
3. Experimental Results and Analysis
3.1. Calculation Accuracy Analysis
3.2. Simulation Experiments for Improved PTA
3.3. Actual SAR Data Results
4. Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Correction Statement
Appendix A
References
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Parameter | Symbol | Value |
---|---|---|
Carrier frequency | 15.2 GHz | |
Bandwidth | 1200 MHz | |
Reference range | 650 m | |
Pulse repetition frequency | 250 Hz | |
Azimuth beamwidth | 3° | |
Speed of flight | 8 m/s | |
Squint angle | −5.2° | |
Flight height | 400 m |
Parameter | Symbol | Value |
---|---|---|
Carrier frequency | 15.2 GHz | |
Bandwidth | 1200 MHz | |
Reference range | 650 m | |
Pulse repetition frequency | 250 Hz | |
Azimuth beamwidth | 3° | |
Speed of flight | 7.89 m/s | |
Squint angle | −7.86° | |
Flight height | 402 m |
Method | IRW(m) | PLSR (dB) | ILSR (dB) |
---|---|---|---|
Traditional improved PTA | 0.303 | −9.752 | −7.416 |
CMBP algorithm | 0.301 | −11.524 | −11.460 |
Proposed improved PTA | 0.295 | −13.515 | −10.773 |
Method | Image Entropy (IE) | Image Contrast (IC) |
---|---|---|
Result of ω-k | 10.64 | 1.19 |
Result of ω-k +traditional improved PTA | 10.52 | 1.23 |
Result of ω-k +CMBP | 10.44 | 1.26 |
Result of ω-k +proposed improved PTA | 10.31 | 1.31 |
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Cheng, Y.; Qiu, X.; Meng, D. Precise Motion Compensation of Multi-Rotor UAV-Borne SAR Based on Improved PTA. Remote Sens. 2024, 16, 2678. https://doi.org/10.3390/rs16142678
Cheng Y, Qiu X, Meng D. Precise Motion Compensation of Multi-Rotor UAV-Borne SAR Based on Improved PTA. Remote Sensing. 2024; 16(14):2678. https://doi.org/10.3390/rs16142678
Chicago/Turabian StyleCheng, Yao, Xiaolan Qiu, and Dadi Meng. 2024. "Precise Motion Compensation of Multi-Rotor UAV-Borne SAR Based on Improved PTA" Remote Sensing 16, no. 14: 2678. https://doi.org/10.3390/rs16142678
APA StyleCheng, Y., Qiu, X., & Meng, D. (2024). Precise Motion Compensation of Multi-Rotor UAV-Borne SAR Based on Improved PTA. Remote Sensing, 16(14), 2678. https://doi.org/10.3390/rs16142678