基于贝叶斯压缩感知的雷达信号自适应测量

Wei Wang, Baoju Zhang
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摘要

简要介绍了贝叶斯压缩感知理论。设计了一种基于估计信号微分熵的评价指标,并以分块的方式提出了不含被测信号先验信息的自适应压缩测量方法。对随机步进信号和实际雷达信号的数值仿真验证了自适应算法的良好性能。该方法为实时信号的自适应压缩测量提供了巨大的潜力。
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Bayesian compressive sensing for adaptive measurement of radar signal
The theory of Bayesian Compressive Sensing is briefly introduced. An evaluation index based on differential entropy of estimated signal is devised and the adaptive compressive measurement procedure without any prior information about the measured signals is presented in block manner. Numerical simulations on random step signal and real radar signal verify that the adaptive algorithm has good performance. This novel offers great potential for adaptive compressive measuring real time signal.
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