Information distances for radar resolution analysis

R. Pribic, G. Leus
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引用次数: 6

Abstract

A stochastic approach to resolution based on information distances computed from the geometry of data models which is characterized by the Fisher information is explored. Stochastic resolution includes probability of resolution and signal-to-noise ratio (SNR). The probability of resolution is assessed from a hypothesis test by exploiting information distances in a likelihood ratio. Taking SNR into account is especially relevant in compressive sensing (CS) due to its fewer measurements. Based on this information-geometry approach, we demonstrate the stochastic resolution analysis in test cases from array processing. In addition, we also compare our stochastic resolution bounds with the actual resolution obtained numerically from sparse signal processing which nowadays is a major component of the back end of any CS sensor. Results demonstrate the suitability of the proposed stochastic resolution analysis due to its ability to include crucial features in the resolution performance guarantees: array configuration or sensor design, SNR, separation and probability of resolution.
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用于雷达分辨率分析的信息距离
研究了一种基于数据模型几何信息距离的随机分辨方法,该方法以Fisher信息为特征。随机分辨率包括分辨率概率和信噪比。通过利用似然比中的信息距离,从假设检验中评估解决的概率。考虑信噪比在压缩感知(CS)中尤其重要,因为它的测量量较少。基于这种信息几何方法,我们在数组处理的测试用例中演示了随机分辨率分析。此外,我们还将随机分辨率边界与稀疏信号处理获得的实际分辨率进行了比较,稀疏信号处理目前是任何CS传感器后端的主要组成部分。结果证明了所提出的随机分辨率分析的适用性,因为它能够包括分辨率性能保证中的关键特征:阵列配置或传感器设计、信噪比、分离和分辨率概率。
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