MB-RACS: Measurement-Bounds-Based Rate-Adaptive Image Compressed Sensing Network

Yujun Huang;Bin Chen;Naiqi Li;Baoyi An;Shu-Tao Xia;Yaowei Wang
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Abstract

Conventional compressed sensing (CS) algorithms typically apply a uniform sampling rate to different image blocks. A more strategic approach could be to allocate the number of measurements adaptively, based on each image block’s complexity. In this paper, we propose a Measurement-Bounds-based Rate-Adaptive Image Compressed Sensing Network (MB-RACS) framework, which aims to adaptively determine the sampling rate for each image block in accordance with traditional measurement bounds theory. Moreover, since in real-world scenarios statistical information about the original image cannot be directly obtained, we suggest a multi-stage rate-adaptive sampling strategy. This strategy sequentially adjusts the sampling ratio allocation based on the information gathered from previous samplings. We formulate the multi-stage rate-adaptive sampling as a convex optimization problem and address it using a combination of Newton’s method and binary search techniques. Our experiments demonstrate that the proposed MB-RACS method surpasses current leading methods, with experimental evidence also underscoring the effectiveness of each module within our proposed framework.
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MB-RACS:基于测量边界的速率自适应图像压缩传感网络
传统的压缩感知(CS)算法通常对不同的图像块采用统一的采样率。更有策略的方法可能是根据每个图像块的复杂性自适应地分配测量的数量。本文提出了一种基于测量边界的速率自适应图像压缩感知网络(MB-RACS)框架,该框架旨在根据传统的测量边界理论自适应确定每个图像块的采样率。此外,由于在真实场景中无法直接获得原始图像的统计信息,我们建议采用多阶段自适应采样策略。该策略根据从以前的采样中收集的信息依次调整采样比例分配。我们将多阶段速率自适应采样作为一个凸优化问题,并结合牛顿方法和二分搜索技术来解决它。我们的实验表明,我们提出的MB-RACS方法超越了目前的领先方法,实验证据也强调了我们提出的框架中每个模块的有效性。
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