Compressive quantization versus compressive sampling in image digitization

Y. Poberezhskiy
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引用次数: 1

Abstract

Digital image compression reduces the bandwidth, time, and energy needed for transmission of images and signals, as well as memory needed for their storage. However, it cannot solve the digitization problems. Recently proposed compressive sampling (or sensing) solves these problems by reducing the average number of projections required for representing images and signals through exploiting their sparsity. An alternative approach named compressive quantization solves identical problems by reducing the average number of bits required for the same purpose. It exploits statistical properties of images and signals, as well as specific features of quantizers. In this paper, the analysis and further development of compressive quantization used for digitization of images is combined with its comparison to compressive sampling. It is shown that compressive quantization simplifies the image digitization more significantly and provides more effective and less distorting compression than compressive sampling. Its practical realization is much easier than that of compressive sampling. The root causes of these advantages are revealed.
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图像数字化中的压缩量化与压缩采样
数字图像压缩减少了传输图像和信号所需的带宽、时间和能量,以及存储图像和信号所需的内存。然而,它并不能解决数字化问题。最近提出的压缩采样(或传感)通过利用图像和信号的稀疏性来减少表示图像和信号所需的投影的平均数量,从而解决了这些问题。另一种称为压缩量化的方法通过减少相同目的所需的平均比特数来解决相同的问题。它利用图像和信号的统计特性,以及量化器的特定特性。本文对用于图像数字化的压缩量化进行了分析和进一步发展,并与压缩采样进行了比较。结果表明,压缩量化比压缩采样更显著地简化了图像数字化,提供了更有效、更少失真的压缩。它的实际实现比压缩采样容易得多。揭示了这些优势的根本原因。
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