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Image Compressive Sensing Recovery via Collaborative Sparsity

机译:通过协同稀疏度进行图像压缩感知恢复

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Compressive sensing (CS) has drawn quite an amount of attention as a joint sampling and compression approach. Its theory shows that when the signal is sparse enough in some domain, it can be decoded from many fewer measurements than suggested by the Nyquist sampling theory. So one of the most challenging researches in CS is to seek a domain where a signal can exhibit a high degree of sparsity and hence be recovered faithfully. Most of the conventional CS recovery approaches, however, exploited a set of fixed bases (e.g., DCT, wavelet, and gradient domain) for the entirety of a signal, which are irrespective of the nonstationarity of natural signals and cannot achieve high enough degree of sparsity, thus resulting in poor rate-distortion performance. In this paper, we propose a new framework for image compressive sensing recovery via collaborative sparsity, which enforces local 2-D sparsity and nonlocal 3-D sparsity simultaneously in an adaptive hybrid space-transform domain, thus substantially utilizing intrinsic sparsity of natural images and greatly confining the CS solution space. In addition, an efficient augmented Lagrangian-based technique is developed to solve the above optimization problem. Experimental results on a wide range of natural images are presented to demonstrate the efficacy of the new CS recovery strategy.
机译:作为联合采样和压缩方法,压缩感测(CS)引起了很多关注。它的理论表明,当信号在某个域中足够稀疏时,可以用比奈奎斯特采样理论所建议的少得多的测量值对其进行解码。因此,CS中最具挑战性的研究之一是寻找一个信号可以表现出高度稀疏性并因此得以忠实恢复的领域。但是,大多数传统的CS恢复方法都为整个信号利用了一组固定的基数(例如DCT,小波和梯度域),而与自然信号的非平稳性无关,并且无法实现足够高的稀疏性,从而导致不良的速率失真性能。在本文中,我们提出了一种通过协作稀疏性进行图像压缩感测恢复的新框架,该框架在自适应混合空间变换域中同时强制执行局部2-D稀疏性和非局部3-D稀疏性,从而充分利用了自然图像的固有稀疏性和极大地限制了CS解决方案的空间。另外,开发了一种有效的基于拉格朗日增广的技术来解决上述优化问题。提出了在各种自然图像上的实验结果,以证明新的CS恢复策略的功效。

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