红外与可见光图像融合:从数据兼容到任务适应

IF 18.6
Jinyuan Liu;Guanyao Wu;Zhu Liu;Di Wang;Zhiying Jiang;Long Ma;Wei Zhong;Xin Fan;Risheng Liu
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引用次数: 0

摘要

红外-可见光图像融合是计算机视觉领域的一项基础和关键任务。其目的是将红外光谱和可见光光谱的独特特征整合成一个整体的表示。自2018年以来,越来越多和多样化的人工智能方法进入了一个深度学习时代,包括引入了广泛的网络或损失函数来改善视觉增强。随着研究的深入和实际需求的增长,数据兼容性、感知精度和效率等几个复杂的问题不容忽视。遗憾的是,最近缺乏全面介绍和组织这一不断扩大的知识领域的调查。鉴于目前的快速发展,本文旨在通过提供一个涵盖广泛方面的全面调查来填补现有的空白。首先,我们引入了一个多维框架来阐明流行的基于学习的IVIF方法,涵盖从基本视觉增强策略到数据兼容性、任务适应性和进一步扩展的主题。随后,我们对这些新方法进行了深入分析,并提供了详细的查找表来阐明其核心思想。最后,我们还从数量和质量上总结了性能比较,包括注册、融合和后续高级别任务。除了深入研究这些基于学习的融合方法的技术细微差别之外,我们还探索了潜在的未来方向和值得社区进一步探索的开放问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Infrared and Visible Image Fusion: From Data Compatibility to Task Adaption
Infrared-visible image fusion (IVIF) is a fundamental and critical task in the field of computer vision. Its aim is to integrate the unique characteristics of both infrared and visible spectra into a holistic representation. Since 2018, growing amount and diversity IVIF approaches step into a deep-learning era, encompassing introduced a broad spectrum of networks or loss functions for improving visual enhancement. As research deepens and practical demands grow, several intricate issues like data compatibility, perception accuracy, and efficiency cannot be ignored. Regrettably, there is a lack of recent surveys that comprehensively introduce and organize this expanding domain of knowledge. Given the current rapid development, this paper aims to fill the existing gap by providing a comprehensive survey that covers a wide array of aspects. Initially, we introduce a multi-dimensional framework to elucidate the prevalent learning-based IVIF methodologies, spanning topics from basic visual enhancement strategies to data compatibility, task adaptability, and further extensions. Subsequently, we delve into a profound analysis of these new approaches, offering a detailed lookup table to clarify their core ideas. Last but not the least, We also summarize performance comparisons quantitatively and qualitatively, covering registration, fusion and follow-up high-level tasks. Beyond delving into the technical nuances of these learning-based fusion approaches, we also explore potential future directions and open issues that warrant further exploration by the community.
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