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Binned Progressive Quantization for Compressive Sensing

机译:压缩感测的二进制逐行量化

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Compressive sensing (CS) has been recently and enthusiastically promoted as a joint sampling and compression approach. The advantages of CS over conventional signal compression techniques are architectural: the CS encoder is made signal independent and computationally inexpensive by shifting the bulk of system complexity to the decoder. While these properties of CS allow signal acquisition and communication in some severely resource-deprived conditions that render conventional sampling and coding impossible, they are accompanied by rather disappointing rate–distortion performance. In this paper, we propose a novel coding technique that rectifies, to a certain extent, the problem of poor compression performance of CS and, at the same time, maintains the simplicity and universality of the current CS encoder design. The main innovation is a scheme of progressive fixed-rate scalar quantization with binning that enables the CS decoder to exploit hidden correlations between CS measurements, which was overlooked in the existing literature. Experimental results are presented to demonstrate the efficacy of the new CS coding technique. Encouragingly, on some test images, the new CS technique matches or even slightly outperforms JPEG.
机译:压缩感测(CS)作为联合采样和压缩方法最近得到了热烈的推广。 CS相对于常规信号压缩技术的优势是体系结构上的:CS编码器通过将大量的系统复杂性转移到解码器上,从而使信号独立于信号并且在计算上不昂贵。尽管CS的这些特性允许在某些资源严重匮乏的情况下进行信号采集和通信,这使得常规采样和编码变得不可能,但它们却伴随着令人失望的速率失真性能。在本文中,我们提出了一种新颖的编码技术,该技术在一定程度上纠正了CS压缩性能差的问题,同时又保持了当前CS编码器设计的简单性和通用性。主要创新是一种采用合并的渐进固定速率标量量化方案,该方案使CS解码器能够利用CS测量之间的隐藏相关性,而这在现有文献中已被忽略。提出实验结果以证明新的CS编码技术的功效。令人鼓舞的是,在某些测试图像上,新的CS技术与JPEG相匹配甚至略胜于JPEG。

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