Compressed Sensing, Compressed Classification and Joint Signal Recovery

نویسنده

  • Mohammad Emtiyaz Khan
چکیده

We review compressive sensing and its extension to classification and joint signal recovery. We present an overview of compressed sensing, followed by some simulation results on perfect reconstruction for sparse signals. We review previous work on compressed signal classification and discuss relations between the two earlier papers. Finally, we discuss joint signal reconstruction for compressed sensing.

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تاریخ انتشار 2007