Model-Guided Adaptive Recovery of Compressive Sensing

Xiaolin Wu, Xiangjun Zhang, Jia Wang
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引用次数: 58

Abstract

For the new signal acquisition methodology of compressive sensing (CS) a challenge is to find a space in which the signal is sparse and hence recoverable faithfully. Given the nonstationarity of many natural signals such as images, the sparse space is varying in time or spatial domain. As such, CS recovery should be conducted in locally adaptive, signal-dependent spaces to counter the fact that the CS measurements are global and irrespective of signal structures. On the contrary existing CS reconstruction methods use a fixed set of bases (e.g., wavelets, DCT, and gradient spaces) for the entirety of a signal. To rectify this problem we propose a new model-based framework to facilitate the use of adaptive bases in CS recovery. In a case study we integrate a piecewise stationary autoregressive model into the recovery process for CS-coded images, and are able to increase the reconstruction quality by $2 \thicksim 7$dB over existing methods. The new CS recovery framework can readily incorporate prior knowledge to boost reconstruction quality.
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模型导向的压缩感知自适应恢复
对于新的压缩感知信号采集方法来说,一个挑战是找到一个信号稀疏的空间,从而忠实地恢复信号。由于图像等自然信号的非平稳性,稀疏空间在时域或空域上是变化的。因此,CS恢复应该在局部自适应、信号依赖的空间中进行,以应对CS测量是全局的、与信号结构无关的事实。相反,现有的CS重建方法对整个信号使用一组固定的基(例如,小波、DCT和梯度空间)。为了纠正这一问题,我们提出了一个新的基于模型的框架,以促进自适应基在CS恢复中的使用。在一个案例研究中,我们将分段平稳自回归模型集成到cs编码图像的恢复过程中,并且能够将重建质量提高到现有方法的2 \thicksim 7$dB。新的CS恢复框架可以很容易地结合先验知识来提高重建质量。
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