基于对抗样本的一比特雷达成像自适应阈值设计

Jianghong Han, Gang Li, Xiao-Ping Zhang
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引用次数: 1

摘要

本文提出了一种基于对抗样本的一比特雷达成像自适应量化阈值方案。基于1位压缩感知(CS)的雷达成像技术因其存储负担小、对模数转换器要求低而备受关注。然而,传统的固定阈值的1位量化方案没有利用幅度信息,可能导致能量估计困难和幅度恢复误差较大。近年来,针对固定阈值方案的局限性,发展了自适应阈值方法。该方法基于对抗性训练理论,将对抗性样本嵌入到二值迭代硬阈值(BIHT)算法中,并利用基于对抗性样本的自适应阈值方案,提高了模型的鲁棒性和一比特编码数据的成像质量。仿真结果表明,该方法在一比特雷达成像中优于固定阈值的BIHT方法。
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Design of Adaptive Thresholds For One-Bit Radar Imaging Based on Adversarial Samples
In this paper, we present a new scheme of adaptive quantization thresholds for one-bit radar imaging based on adversarial samples. Radar imaging with one-bit compressive sensing (CS) is attractive due to the small storage burden and low requirements to the analog-to-digital converter. However, conventional one-bit quantization scheme with fixed thresholds does not use the magnitude information, possibly leading to difficulty in energy estimation and higher amplitude recovery error. Recently, adaptive thresholds methods have been developed to deal with the limitation of fixed thresholds scheme. Based on the adversarial training theory, the proposed new method embeds adversarial samples into the binary iterative hard thresholding (BIHT) algorithm and exploits an adaptive thresholds scheme based on the adversarial samples to improve the model robustness and imaging quality with one-bit coded data. Simulation results demonstrate that the proposed method outperforms the BIHT with fixed thresholds in one-bit radar imaging.
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