压缩在非稀疏信号重构中的作用

I. Stanković, M. Brajović, L. Stanković, M. Daković
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引用次数: 0

摘要

本文分析了扩展量化在非稀疏(近似稀疏)信号重构中的误差。压缩感知(CS)算法用于从减少的可用观测集重建这些信号。标准的CS理论假设可用的和重构的样本用无限位数表示。然而,硬件实现要求只能使用有限数量的比特,从而将量化效应引入CS框架。基于均匀量化测量的重建取得了良好的效果。然而,非均匀量化引入了重建性能的额外改进。压缩是对信号进行非均匀量化的一种方法。它是基于信号的压缩、量化和随后的量化信号的扩展。在本文中,我们提出了一个表征基于量化测量的重建过程的理论误差,并通过一系列数值算例进一步验证了该理论误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effect of Companding in the Reconstruction of Nonsparse Signals
In this paper, the error of companding quantization is analyzed in the reconstruction of nonsparse (approximately sparse) signals. Compressive sensing (CS) algorithms are used for the reconstruction of these signals from a reduced set of available observations. The standard CS theory assumes that the available and reconstructed samples are represented with unlimited number of bits. However, hardware implementation demands that only a finite number of bits can be used, thereby introducing the quantization effect into the CS framework. The reconstruction based on uniformly quantizatized measurements showed promising results. However, nonuniform quantization introduces additional improvements in the reconstruction performance. Companding is a way to nonuniformly quantize signals. It is based on compression of the signal, quantization, and subsequent expansion of the quantized signal. In this paper, we present a theoretical error characterizing the reconstruction process based on quantized measurements, which is further verified on series of numerical examples.
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