A Lightweight Recurrent Learning Network for Sustainable Compressed Sensing
Yu Zhou, Yu Chen, Xiao Zhang, Pan Lai, Lei Huang, Jianmin Jiang

TL;DR
This paper introduces a lightweight recurrent neural network for compressed sensing that reduces computational costs and memory usage while maintaining high reconstruction quality, outperforming existing methods.
Contribution
A novel deep neural network with recurrent learning for sustainable compressed sensing, featuring fewer parameters and efficient residual feature extraction.
Findings
Achieves better reconstruction quality than state-of-the-art algorithms.
Uses significantly fewer network parameters.
Reduces memory requirements through feature map optimization.
Abstract
Recently, deep learning-based compressed sensing (CS) has achieved great success in reducing the sampling and computational cost of sensing systems and improving the reconstruction quality. These approaches, however, largely overlook the issue of the computational cost; they rely on complex structures and task-specific operator designs, resulting in extensive storage and high energy consumption in CS imaging systems. In this paper, we propose a lightweight but effective deep neural network based on recurrent learning to achieve a sustainable CS system; it requires a smaller number of parameters but obtains high-quality reconstructions. Specifically, our proposed network consists of an initial reconstruction sub-network and a residual reconstruction sub-network. While the initial reconstruction sub-network has a hierarchical structure to progressively recover the image, reducing the…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Photoacoustic and Ultrasonic Imaging · Electrical and Bioimpedance Tomography
