LRRNet: A Novel Representation Learning Guided Fusion Network for Infrared and Visible Images
Hui Li, Tianyang Xu, Xiao-Jun Wu, Jiwen Lu, Josef Kittler

TL;DR
LRRNet introduces a learnable, lightweight fusion network guided by low-rank representation principles, effectively combining infrared and visible images with fewer parameters and improved performance over existing methods.
Contribution
The paper proposes a novel fusion network architecture that integrates low-rank representation into a learnable, end-to-end model, avoiding empirical design and enhancing fusion quality.
Findings
Outperforms state-of-the-art fusion methods on public datasets.
Requires fewer training parameters than existing approaches.
Effectively preserves image details and salient features.
Abstract
Deep learning based fusion methods have been achieving promising performance in image fusion tasks. This is attributed to the network architecture that plays a very important role in the fusion process. However, in general, it is hard to specify a good fusion architecture, and consequently, the design of fusion networks is still a black art, rather than science. To address this problem, we formulate the fusion task mathematically, and establish a connection between its optimal solution and the network architecture that can implement it. This approach leads to a novel method proposed in the paper of constructing a lightweight fusion network. It avoids the time-consuming empirical network design by a trial-and-test strategy. In particular we adopt a learnable representation approach to the fusion task, in which the construction of the fusion network architecture is guided by the…
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Taxonomy
TopicsAdvanced Image Fusion Techniques · Photoacoustic and Ultrasonic Imaging · Remote-Sensing Image Classification
