基于深度神经网络的数据自适应压缩感知图像识别

Ronak Gupta, Aditya Kumar, S. Chaudhury, Brejesh Lall, V. Kaushik
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引用次数: 0

摘要

压缩感知(CS)利用深度学习从测量中恢复图像,近年来得到了很好的探索。为了克服内存和计算的限制,选择了基于块或补丁的压缩感知,而不是感知/采样全图像。这种基于块的CS采样和恢复的缺点是它不能捕获全局上下文,而只关注局部上下文。这导致在两个连续图像块的边界处产生伪影。随机高斯矩阵或随机伯努利矩阵通常用作感知矩阵,对图像块进行采样并产生相应的线性测量。尽管随机高斯矩阵或随机伯努利矩阵具有受限等距特性(RIP),这是获得高质量重建图像的保证,但其两个主要缺点是:1)内存和计算需求大;2)其编码测量值不能很好地泛化到大规模数据集。在本文中,我们提出了一种基于深度学习框架的数据自适应CS用于图像识别,其中1)考虑全局上下文进行采样,2)从数据中学习编码以获得测量值,从而实现对大规模数据集的泛化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Adaptive Compressed Sensing using deep neural network for Image recognition
Compressive sensing (CS) using deep learning for recovery of images from measurements has been well explored in recent years. Instead of sensing/sampling full image, block or patch based compressive sensing is chosen to overcome memory and computation limitations. The drawback of this block based CS sampling and recovery is that it does not capture global context and focuses only on the local context. This results in artifacts at the boundary of two consecutive image blocks. Random Gaussian or random Bernoulli matrix are commonly used as sensing matrices to sample an image block and generate corresponding linear measurements. Although, random Gaussian or random Bernoulli matrices exhibits Restricted Isometry property (RIP), which is a guarantee for good quality reconstructed image, its two main disadvantages are: 1) large memory and computational requirements and 2) their encoded measurements doesn't generalize well to a large-scale dataset. In this paper, we propose a data adaptive CS based on deep learning framework for image recognition where 1) sampling is done considering the global context and 2) encoding to obtain measurements is learned from data, so as to achieve the generalization over large-scale dataset.
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