Text-IF: Leveraging Semantic Text Guidance for Degradation-Aware and Interactive Image Fusion
Xunpeng Yi, Han Xu, Hao Zhang, Linfeng Tang, Jiayi Ma

TL;DR
Text-IF introduces a novel text-guided image fusion model that effectively handles degraded low-quality images and supports interactive, multi-modal fusion, outperforming state-of-the-art methods in quality and degradation management.
Contribution
The paper presents a new text-guided image fusion approach that extends classical methods to incorporate semantic text guidance for degradation-aware and interactive fusion.
Findings
Outperforms SOTA methods in image fusion quality.
Effectively manages degradation in low-quality source images.
Supports multi-modal and interactive fusion processes.
Abstract
Image fusion aims to combine information from different source images to create a comprehensively representative image. Existing fusion methods are typically helpless in dealing with degradations in low-quality source images and non-interactive to multiple subjective and objective needs. To solve them, we introduce a novel approach that leverages semantic text guidance image fusion model for degradation-aware and interactive image fusion task, termed as Text-IF. It innovatively extends the classical image fusion to the text guided image fusion along with the ability to harmoniously address the degradation and interaction issues during fusion. Through the text semantic encoder and semantic interaction fusion decoder, Text-IF is accessible to the all-in-one infrared and visible image degradation-aware processing and the interactive flexible fusion outcomes. In this way, Text-IF achieves…
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Taxonomy
TopicsAdvanced Image Fusion Techniques
