Block-Based Compressive Sensing Coding of Natural Images by Local Structural Measurement Matrix

Xinwei Gao, Jian Zhang, Wenbin Che, Xiaopeng Fan, Debin Zhao
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引用次数: 47

Abstract

Gaussian random matrix (GRM) has been widely used to generate linear measurements in compressive sensing (CS) of natural images. However, in practice, there actually exist two problems with GRM. One is that GRM is non-sparse and complicated, leading to high computational complexity and high difficulty in hardware implementation. The other is that regardless of the characteristics of signal the measurements generated by GRM are also random, which results in low efficiency of compression coding. In this paper, we design a novel local structural measurement matrix (LSMM) for block-based CS coding of natural images by utilizing the local smooth property of images. The proposed LSMM has two main advantages. First, LSMM is a highly sparse matrix, which can be easily implemented in hardware, and its reconstruction performance is even superior to GRM at low CS sampling sub rate. Second, the adjacent measurement elements generated by LSMM have high correlation, which can be exploited to greatly improve the coding efficiency. Furthermore, this paper presents a new framework with LSMM for block-based CS coding of natural images, including measurement generating, measurement coding and CS reconstruction. Experimental results show that the proposed framework with LSMM for block-based CS coding of natural images greatly enhances the existing CS coding performance when compared with other state-of-the-art image CS coding schemes.
基于局部结构测量矩阵的自然图像分块压缩感知编码
在自然图像压缩感知(CS)中,高斯随机矩阵(GRM)被广泛用于生成线性测量值。然而,在实践中,GRM实际上存在两个问题。一是GRM的非稀疏性和复杂性,导致计算复杂度高,硬件实现难度大。二是无论信号的特性如何,GRM产生的测量值都是随机的,导致压缩编码效率较低。本文利用自然图像的局部平滑特性,设计了一种新的局部结构测量矩阵(LSMM),用于基于块的自然图像CS编码。所提出的LSMM有两个主要优点。首先,LSMM是一个高度稀疏的矩阵,可以很容易地在硬件上实现,在低CS采样子率下,其重建性能甚至优于GRM。其次,LSMM生成的相邻测量元素具有高度的相关性,可以大大提高编码效率。在此基础上,提出了一种基于LSMM的自然图像分块CS编码框架,包括测量值生成、测量值编码和CS重构。实验结果表明,基于LSMM的自然图像分块CS编码框架与其他先进的图像CS编码方案相比,显著提高了现有的CS编码性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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