Matching Pursuit LASSO Part II: Applications and Sparse Recovery over Batch Signals

02/20/2013
by   Mingkui Tan, et al.
0

Matching Pursuit LASSIn Part I TanPMLPart1, a Matching Pursuit LASSO (MPL) algorithm has been presented for solving large-scale sparse recovery (SR) problems. In this paper, we present a subspace search to further improve the performance of MPL, and then continue to address another major challenge of SR -- batch SR with many signals, a consideration which is absent from most of previous ℓ_1-norm methods. As a result, a batch-mode MPL is developed to vastly speed up sparse recovery of many signals simultaneously. Comprehensive numerical experiments on compressive sensing and face recognition tasks demonstrate the superior performance of MPL and BMPL over other methods considered in this paper, in terms of sparse recovery ability and efficiency. In particular, BMPL is up to 400 times faster than existing ℓ_1-norm methods considered to be state-of-the-art.O Part II: Applications and Sparse Recovery over Batch Signals

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