Signal Compression Reconstruction with Narrow-Band Interference

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Compressive sensing (CS) implements sampling and compression to sparse or compressible signals simultaneously. Compressive signal processing is a new signal processing scheme base on compressive sensing theory. In this paper, the problem of signal compressive reconstruction base on narrow-band interference is researched. The reconstruction performance of BP, MP, and OMP algorithms with narrow-band interference is analyzed by computer simulations.

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1110-1113

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October 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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