信息几何学
几何学
雷达
协方差矩阵
基质(化学分析)
计算机科学
随机矩阵
数学
算法
域代数上的
电信
纯数学
特征向量
物理
材料科学
标量曲率
曲率
复合材料
量子力学
出处
期刊:IEEE Radar Conference
日期:2008-05-26
被引量:68
标识
DOI:10.1109/radar.2008.4720937
摘要
New operational requirements for stealth targets detection in dense & inhomogeneous clutter are emerging (littoral warfare, low altitude asymmetric threats, battlefield in urban area...). Classical radar approaches for Doppler & array signal processing have reached their limits. We propose new improvements based on advanced mathematical studies on geometry of SPD matrix (symmetric positive definite matrix) and information geometry, using that radar data covariance matrices include all information of the sensor signal. First, information geometry allows to take into account statistics of radar covariance matrix (by mean of Fisher information matrix used in Cramer-Rao bound) to built a robust distance, called Jensen, Siegel or Bruhat-Tits metric. Geometry on ldquosymmetric conesrdquo, developed in frameworks of Lie group and Jordan algebra, provides new algorithms to compute matrix geometric means that could be used for ldquomatrix CFARrdquo. This innovative approach avoids classical drawbacks of Doppler processing by filter banks or FFT in case of bursts with very few pulses.
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