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Low rank plus sparse decomposition of synthetic aperture radar data for maritime surveillance

机译:低级别加稀疏分解合成孔径雷达数据的海上监控

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Synthetic Aperture Radar (SAR) systems produce a tremendous amount of redundant data if persistent radar surveillance of a specific area is implemented. This paper performs an efficient data reduction extrapolating maritime targets in motion from background subtraction. The technique is based on Robust Principal Component Analysis (RPCA). The algorithm is implemented by Convex Programming (CP). This Low Rank and Sparse Decomposition (LRSD) activity permits the separation of sparse objects of interest, with a stationary low-rank background. RPCA applied to SAR surveillance permits the saving of a large amount of data. Dynamic SAR is procured by Multi Chromatic Analysis (MCA) of Native (RAW)1 satellite data.
机译:如果实现特定区域的持久雷达监控,则合成孔径雷达(SAR)系统会产生巨大的冗余数据。本文从背景减法中执行有效的数据减少外推海上目标。该技术基于鲁棒主成分分析(RPCA)。该算法由凸编程(CP)实现。这种低等级和稀疏分解(LRSD)活动允许分离稀疏的感兴趣对象,具有静止的低级背景。应用于SAR监控的RPCA允许节省大量数据。动态SAR是通过本机(RAW)1卫星数据的多色分析(MCA)采购的。

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