Publication | Open Access
Information Geometry for Radar Target Detection with Total Jensen–Bregman Divergence
26
Citations
18
References
2018
Year
RadarEngineeringData ScienceSynthetic Aperture RadarPattern RecognitionRadar ScatteringTarget DetectionAutomatic Target RecognitionImaging RadarRadar Image ProcessingInverse ProblemsRadar Signal ProcessingRadar ApplicationHpd MatricesSignal ProcessingStatisticsInformation GeometryRadar Imaging
This paper proposes a radar target detection algorithm based on information geometry. In particular, the correlation of sample data is modeled as a Hermitian positive-definite (HPD) matrix. Moreover, a class of total Jensen-Bregman divergences, including the total Jensen square loss, the total Jensen log-determinant divergence, and the total Jensen von Neumann divergence, are proposed to be used as the distance-like function on the space of HPD matrices. On basis of these divergences, definitions of their corresponding median matrices are given. Finally, a decision rule of target detection is made by comparing the total Jensen-Bregman divergence between the median of reference cells and the matrix of cell under test with a given threshold. The performance analysis on both simulated and real radar data confirm the superiority of the proposed detection method over its conventional counterparts and existing ones.
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