An Improved Hard Thresholding Pursuit Algorithm for Compressive Sensing

Qingliu Li, D. Ren, Yuan Luo
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Abstract

The tail- ℓ1 minimization model greatly improves the sparse signal recovery ability compared with ℓ1 minimization model. However, solving the tail- ℓ1 minimization problem requires high computational cost and a lot of time. The hard thresholding pursuit (HTP) technology is attractive due to its computational efficiency in practice. Inspired by the HTP technology, the HTP technology is considered to be an efficient technique to solve the tail- ℓ1 minimization problem. This paper introduces an improved HTP technology, namely tail-HTP. The tail-HTP technology retains the computational simplicity of the HTP technology and greatly improves the efficiency of solving the tail- ℓ1 minimization problem. In addition, the tail-HTP technology also improves the sparse signal recovery ability of the HTP technology. The experimental results verify the high efficiency and superior sparse signal recovery ability of the tail-HTP technology.
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一种改进的压缩感知硬阈值追踪算法
与最小化模型相比,尾部最小化模型极大地提高了稀疏信号恢复能力。然而,求解尾部最小化问题需要较高的计算成本和大量的时间。硬阈值追踪(HTP)技术在实际应用中因其计算效率高而备受关注。受HTP技术的启发,HTP技术被认为是一种有效的解决尾- 1最小化问题的技术。本文介绍了一种改进的http技术,即尾http。尾部HTP技术保留了HTP技术的计算简洁性,极大地提高了求解尾部最小化问题的效率。此外,尾部HTP技术还提高了HTP技术的稀疏信号恢复能力。实验结果验证了尾部htp技术的高效率和优越的稀疏信号恢复能力。
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