计算机科学
压缩传感
瓶颈
解码方法
边距(机器学习)
迭代重建
过程(计算)
人工智能
图像(数学)
信息瓶颈法
实时计算
算法
相互信息
机器学习
操作系统
嵌入式系统
作者
Bokyeung Lee,Kyungdeuk Ko,Jonghwan Hong,Bonhwa Ku,Hanseok Ko
标识
DOI:10.1109/lsp.2022.3205275
摘要
Image Compressed Sensing (CS) has achieved a lot of performance improvement thanks to advances in deep networks. The CS method is generally composed of a sensing and a decoder. The sensing and decoder networks have a significant impact on the reconstruction performance, and it is obvious that both two networks must be in harmony. However, previous studies have focused on designing the loss function considering only the decoder network. In this paper, we propose a novel training process that can learn sensing and decoder networks simultaneously using Information Bottleneck (IB) theory. By maximizing importance through proposed importance generator, the sensing network is trained to compress important information for image reconstruction of the decoder network. The representative experimental results demonstrate that the proposed method is applied in recently proposed CS algorithms and increases the reconstruction performance with large margin in all CS ratios.
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