Yi-chang Chen, Qun Zhang, Guozheng Wang, Youqing Bai, F. Gu
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A novel compressing method of airborne SAR raw data
The storage and transmission of SAR raw data are two basic challenges of high-resolution real-time SAR imaging. To address these problems, a new approach for processing SAR raw data combined with compressed sensing (CS) and Block adaptive tree-structure vector quantization (BATSVQ) is proposed in this paper. For SAR returned signals, CS is engaged to down-sample the radar echoes in the pulse duration. Then, BATSVQ is employed to diminish encode number of every sample value. The compressed data can be transmitted effectively. In the signal receiver, data reconstruction process contains the two ordinal steps according to BATSVQ algorithm and CS reconstruction. Afterward, the Chirp Scaling imaging algorithm is executed to achieve the final SAR image. The simulation results and analysis validate the effectiveness of the proposed method.