PT Unknown AU Gisel Bastidas-Guacho Patricio Moreno Boris X. Vintimilla Angel Sappa TI Application on the Loop of Multimodal Image Fusion: Trends on Deep-Learning Based Approaches BT 13th International Conference on Pattern Recognition Systems PY 2023 BP 25–36 VL 14234 DI 10.1109/ICPRS58416.2023.10179005 AB Multimodal image fusion allows the combination of information from different modalities, which is useful for tasks such as object detection, edge detection, and tracking, to name a few. Using the fused representation for applications results in better task performance. There are several image fusion approaches, which have been summarized in surveys. However, the existing surveys focus on image fusion approaches where the application on the loop of multimodal image fusion is not considered. On the contrary, this study summarizes deep learning-based multimodal image fusion for computer vision (e.g., object detection) and image processing applications (e.g., semantic segmentation), that is, approaches where the application module leverages the multimodal fusion process to enhance the final result. Firstly, we introduce image fusion and the existing general frameworks for image fusion tasks such as multifocus, multiexposure and multimodal. Then, we describe the multimodal image fusion approaches. Next, we review the state-of-the-art deep learning multimodal image fusion approaches for vision applications. Finally, we conclude our survey with the trends of task-driven multimodal image fusion. ER