Conti-Fuse: A Novel Continuous Decomposition-based Fusion Framework for Infrared and Visible Images
Hui Li, Haolong Ma, Chunyang Cheng, Zhongwei Shen, Xiaoning Song,, Xiao-Jun Wu

TL;DR
Conti-Fuse introduces a continuous decomposition-based framework for infrared and visible image fusion, improving feature representation and fusion quality by capturing more detailed inter-modal relationships.
Contribution
It proposes a novel continuous decomposition strategy and a State Transformer module, enhancing the preservation of critical information in fused images.
Findings
Outperforms state-of-the-art fusion methods
Reduces information loss during decomposition
Achieves superior visual and quantitative results
Abstract
For better explore the relations of inter-modal and inner-modal, even in deep learning fusion framework, the concept of decomposition plays a crucial role. However, the previous decomposition strategies (base \& detail or low-frequency \& high-frequency) are too rough to present the common features and the unique features of source modalities, which leads to a decline in the quality of the fused images. The existing strategies treat these relations as a binary system, which may not be suitable for the complex generation task (e.g. image fusion). To address this issue, a continuous decomposition-based fusion framework (Conti-Fuse) is proposed. Conti-Fuse treats the decomposition results as few samples along the feature variation trajectory of the source images, extending this concept to a more general state to achieve continuous decomposition. This novel continuous decomposition strategy…
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Taxonomy
TopicsAdvanced Image Fusion Techniques · Image Enhancement Techniques · Image and Signal Denoising Methods
MethodsAttention Is All You Need · Softmax · Focus · Layer Normalization · Linear Layer · Byte Pair Encoding · Label Smoothing · Adam · Residual Connection · Multi-Head Attention
