Dual-Path Hyperprior Informed Deep Unfolding Network for Image Compressive Sensing
Tianyi Lu, Wenxue Cui, Shaohui Liu

TL;DR
This paper introduces a dual-path hyperprior deep unfolding network for image compressive sensing, improving information interaction and region-specific reconstruction accuracy.
Contribution
It proposes a novel dual-path architecture with hyperprior guidance and adaptive modules to enhance CS reconstruction beyond existing methods.
Findings
Outperforms existing CS methods in experiments.
Effectively generates hyperprior knowledge for different domains.
Uses adaptive step sizes and attention mechanisms for better reconstruction.
Abstract
Recent Deep Unfolding Networks (DUNs) have significantly advanced Compressive Sensing (CS) by integrating iterative optimization with deep networks. However, existing DUNs still suffer from two challenges: 1) Reliance on a single measurement stream, which limits effective information interaction across distinct measurement subsets. 2) Uniform processing of all image regions, which overlooks varying reconstruction difficulties induced by diverse textures. To address these limitations, a novel Dual-Path Hyperprior Informed Deep Unfolding Network (DPH-DUN) is proposed, which partitions measurements into double subsets to enable hyperprior-guided reconstruction via a dual-path architecture. In the Deep Hyperprior Learning branch, a series of lightweight neural modules are designed to efficiently generate hyperprior knowledge of different domains, enabling collaborative guidance for the CS…
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