Binary Compressive Sensing via Smoothed ell₀ Gradient Descent
classification
📡 eess.SP
cs.LG
keywords
algorithmbinarysignalscompressiveproposedsensingsmoothedaccount
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We present a Compressive Sensing algorithm for reconstructing binary signals from its linear measurements. The proposed algorithm minimizes a non-convex cost function expressed as a weighted sum of smoothed $\ell_0$ norms which takes into account the binariness of signals. We show that for binary signals the proposed algorithm outperforms other existing algorithms in recovery rate while requiring a short run time.
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