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Rate-distortion analysis of structured sensing matrices for block compressive sensing of images

机译:结构感测矩阵的速率 - 变形矩阵对图像的阻塞性感

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Block compressive sensing (BCS) is a highly promising method for image/video encoding in resource-constrained applications. The computational cost of CS encoder depends on the nature of sensing matrices. Popular random Gaussian and Bernoulli sensing matrices not only demand high encoding complexity but yield poor rate- distortion performance. In contrast, structurally random matrix (SRM) and binary permuted block diagonal matrix (BPBD) help to reduce the encoder complexity drastically. Since transmission cost is much higher than computational cost, it is necessary to evaluate the compression efficiency of these matrices. In this paper, we provide the rate-distortion performance analysis of BCS based imaging system using SRM and BPBD matrices to investigate the choice of sensing matrix for compression and energy efficient CS encoder. Through both theoretical and experimental analysis, it is established in this work that the CS measurements using SRM are Laplacian distributed while that using BPBD matrices retain statistical information of the original images. This finding motivates the use of fixed Huffman coding and fixed length coding with these structured sensing matrices which help to reduce the encoder complexity without causing much deterioration to compression efficiency. Thus our work demonstrates a promising direction towards the realization of an inexpensive encoder.
机译:块压缩感测(BCS)是用于资源受限应用中的图像/视频编码的高度有希望的方法。 CS编码器的计算成本取决于感测矩阵的性质。受欢迎的随机高斯和伯努利传感矩阵不仅需要高编码复杂性,而且产生差的速率变形。相反,结构上随机矩阵(SRM)和二进制置换块对角线矩阵(BPBD)有助于大大降低编码器复杂性。由于传输成本远高于计算成本,因此有必要评估这些矩阵的压缩效率。在本文中,我们提供了使用SRM和BPBD矩阵的基于BCS的成像系统的速率失真性能分析,研究了对压缩和节能CS编码器的感测矩阵的选择。通过理论和实验分析,在这项工作中建立了使用SRM的CS测量是Laplacian分布的,而使用BPBD矩阵保留了原始图像的统计信息。该发现激发了使用固定的霍夫曼编码和固定长度编码的使用,这些结构化感测矩阵有助于降低编码器复杂性而不会导致压缩效率的太大劣化。因此,我们的工作展示了实现廉价编码器的有希望的方向。

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