Zhang Bing-Chen, Wang Wan-Ying, Bi Hui, Zhao Yao, Hong Wen. Polarimetric SAR Tomography for Forested Areas Based on Compressive Multiple Signal Classification[J]. Journal of Electronics & Information Technology, 2015, 37(3): 625-630. doi: 10.11999/JEIT140584
Citation:
Zhang Bing-Chen, Wang Wan-Ying, Bi Hui, Zhao Yao, Hong Wen. Polarimetric SAR Tomography for Forested Areas Based on Compressive Multiple Signal Classification[J]. Journal of Electronics & Information Technology, 2015, 37(3): 625-630. doi: 10.11999/JEIT140584
Zhang Bing-Chen, Wang Wan-Ying, Bi Hui, Zhao Yao, Hong Wen. Polarimetric SAR Tomography for Forested Areas Based on Compressive Multiple Signal Classification[J]. Journal of Electronics & Information Technology, 2015, 37(3): 625-630. doi: 10.11999/JEIT140584
Citation:
Zhang Bing-Chen, Wang Wan-Ying, Bi Hui, Zhao Yao, Hong Wen. Polarimetric SAR Tomography for Forested Areas Based on Compressive Multiple Signal Classification[J]. Journal of Electronics & Information Technology, 2015, 37(3): 625-630. doi: 10.11999/JEIT140584
This paper focuses on the polarimetric SAR tomography for forested areas based on compressive Multiple Signal Classification (MSC). First, full polarimetric SAR receives the reflected echo of the imaging area. Then, the signals from polarimetric channels are used to build multiple measurement vector model, and a wavelet basis is used in order to sparsely represent vertical structure. For achieving the measurement of forested area, the backscattering coefficients are reconstructed by Compressive Multiple Signal Classification (CMSC) algorithm. Simulated data from PolSARpro software and P-band data acquired by the E-SAR sensor of the German Aerospace Center validate that the method can effectively reduce the passes for SAR tomography and the probability of occurrence of spurious spikes under the same measurement accuracy.