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Clutter identification based on kernel density estimation and sparse recovery...

Publication Type
Conference Paper
Book Title
Proceedings of SPIE: Compressive Sensing VII: From Diverse Modalities to Big Data Analytics
Publication Date
Volume
10658
Conference Name
SPIE Defense and Commercial Sensing (DCS 2018)
Conference Location
Orlando, Florida, United States of America
Conference Sponsor
SPIE
Conference Date
-

A cognitive radar framework is being developed to dynamically detect changes in the clutter characteristics, and to adapt to these changes by identifying the new clutter distribution. In our previous work, we have presented a sparse-recovery based clutter identification technique. In this technique, each column of the dictionary represents a specific distribution. More specifically, calibration radar clutter data corresponding to a specific distribution is transformed into a distribution through kernel density estimation. When the new batch of radar data arrives, the new data is transformed to a distribution through the same kernel density estimation method and its distribution characteristics is identified through sparse-recovery. In this paper, we extend our previous work to consider different kernels and kernel parameters for sparse-recovery-based clutter identification and the numerical results are presented as well. The impact of different kernels and kernel parameters are analyzed by comparing the identification accuracy of each scenario.