CVJun 20, 2022

Explicit and implicit models in infrared and visible image fusion

arXiv:2206.09581v11 citationsh-index: 7
Originality Synthesis-oriented
AI Analysis

This work addresses multi-modal image fusion for applications like surveillance or medical imaging, but it is incremental as it reviews and compares existing models without introducing new methods.

The paper tackles the problem of fusing infrared and visible images by comparing explicit and implicit models, finding that implicit models better learn image features but have stability issues.

Infrared and visible images, as multi-modal image pairs, show significant differences in the expression of the same scene. The image fusion task is faced with two problems: one is to maintain the unique features between different modalities, and the other is to maintain features at various levels like local and global features. This paper discusses the limitations of deep learning models in image fusion and the corresponding optimization strategies. Based on artificially designed structures and constraints, we divide models into explicit models, and implicit models that adaptively learn high-level features or can establish global pixel associations. Ten models for comparison experiments on 21 test sets were screened. The qualitative and quantitative results show that the implicit models have more comprehensive ability to learn image features. At the same time, the stability of them needs to be improved. Aiming at the advantages and limitations to be solved by existing algorithms, we discuss the main problems of multi-modal image fusion and future research directions.

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