AIMS Mathematics (Jul 2022)

Compressive hard thresholding pursuit algorithm for sparse signal recovery

  • Liping Geng,
  • Jinchuan Zhou,
  • Zhongfeng Sun,
  • Jingyong Tang

DOI
https://doi.org/10.3934/math.2022923
Journal volume & issue
Vol. 7, no. 9
pp. 16811 – 16831

Abstract

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Hard Thresholding Pursuit (HTP) is one of the important and efficient algorithms for reconstructing sparse signals. Unfortunately, the hard thresholding operator is independent of the objective function and hence leads to numerical oscillation in the course of iterations. To alleviate this drawback, the hard thresholding operator should be applied to a compressible vector. Motivated by this idea, we propose a new algorithm called Compressive Hard Thresholding Pursuit (CHTP) by introducing a compressive step first to the standard HTP. Convergence analysis and stability of CHTP are established in terms of the restricted isometry property of a sensing matrix. Numerical experiments show that CHTP is competitive with other mainstream algorithms such as the HTP, Orthogonal Matching Pursuit (OMP) and Subspace Pursuit (SP) algorithms both in the sparse signal reconstruction ability and average recovery runtime.

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