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首页> 外文期刊>Asia-Pacific Journal of Operational Research >Fast Thresholding Algorithms with Feedbacks and Partially Known Support for Compressed Sensing
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Fast Thresholding Algorithms with Feedbacks and Partially Known Support for Compressed Sensing

机译:快速阈值算法,具有反馈和用于压缩检测的部分已知支持

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摘要

Some works in modified compressive sensing (CS) show that reconstruction of sparse signals can obtain better results than traditional CS using the partially known support. In this paper, we extend the idea of these works to the null space tuning algorithm with hard thresholding, feedbacks (NST+HT+FB) and derive sufficient conditions for robust sparse signal recovery. The theoretical analysis shows that including prior information of partially known support relaxes the preconditioned restricted isometry property condition comparing with the NST+HT+FB. Numerical experiments demonstrate that the modification improves the performance of the NST+HT+FB, thereby requiring fewer samples to obtain an approximate reconstruction. Meanwhile, a systemic comparison with different methods based on partially known support is shown.
机译:在修改的压缩感测(CS)中有一些作品,表明稀疏信号的重建可以使用部分已知的支持来获得比传统CS更好的结果。在本文中,我们将这些工作的想法扩展到具有硬阈值,反馈(NST + HT + FB)的空间调谐算法,并导出了足够的稀疏信号恢复的条件。理论分析表明,包括部分已知的支持的先前信息放松与NST + HT + FB进行比较的预处理受限的等距特性条件。数值实验表明,修改改善了NST + HT + FB的性能,从而需要较少的样本来获得近似的重建。同时,示出了与基于局部已知的支撑件的不同方法的系统比较。

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