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The Recovery Algorithm of Saturated Sar Raw Data Based on Compressed Sensing

机译:基于压缩感知的饱和Sar原始数据恢复算法

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Because of the unprediction of the scene scattering characteristic and the finite quantization bits, saturated data always exists. Saturation phenomenon leads to a non-linear distortion and interferes to the recognition of the target so that it affects the image quality. Especially when the scene scattering characteristic largely varies, it can generate false targets and degrade signal-to-noise ratio (SNR). Compressed sensing (CS), a non-linear reconstructed algorithm, is that samples in sub-Nyquist rate is used to recover the sparse signal with few non-zero elements. This paper proposes the recovery method based on the nonlinear characteristic of CS to recover the saturated part of the raw data to the unsaturation state and ensure the unsaturated parts maintain the original state. Simulation results validate the proposed method.
机译:由于无法预测场景的散射特性和有限的量化位,因此饱和数据始终存在。饱和现象会导致非线性失真,并干扰目标的识别,从而影响图像质量。尤其是当场景散射特性发生很大变化时,它会生成错误的目标并降低信噪比(SNR)。压缩感测(CS)是一种非线性重构算法,它使用亚奈奎斯特速率下的采样来恢复具有很少非零元素的稀疏信号。提出了一种基于CS非线性特性的恢复方法,将原始数据的饱和部分恢复为不饱和状态,并确保不饱和部分保持原始状态。仿真结果验证了该方法的有效性。

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