Interference Mitigation For Synthetic Aperture Radar Data Using Tensor Representation And Low-Rank Approximation

2020 XXXIIIRD GENERAL ASSEMBLY AND SCIENTIFIC SYMPOSIUM OF THE INTERNATIONAL UNION OF RADIO SCIENCE(2020)

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摘要
Radio frequency interference (RFI) is a critical issue to synthetic aperture radar (SAR), which would cause great distortions to amplitude and phase information of the received echoes. Most of the existing literatures deal with the interference separation problem in time domain, frequency domain, or time-frequency domain using the matrix representation and matrix optimization tools, without further exploiting the correlation among multiple dimensional measurements. This paper proposes an interference separation for SAR data using tensor representation by formulating a novel time-frequency-azimuth tensor. Then, the low-rank property of the interference is utilized and the interference contribution is estimated using low rank tensor approximation. Experimental results demonstrate that the interference components is effectively extracted, and well imaging results could be recovered.
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关键词
RFI,echoes,interference separation problem,time-frequency domain,matrix representation,matrix optimization tools,multiple dimensional measurements,SAR data,tensor representation,low-rank property,interference contribution,low rank tensor approximation,interference components,interference mitigation,synthetic aperture radar data,radiofrequency interference,time-frequency azimuth tensor,amplitude information,phase information
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