CVAIDec 30, 2023

BusReF: Infrared-Visible images registration and fusion focus on reconstructible area using one set of features

arXiv:2401.00285v11 citationsh-index: 12ACM Trans Multimedia Comput Commun Appl
Originality Incremental advance
AI Analysis

This addresses the need for precise image fusion in multi-modal camera systems, but it is incremental as it builds on existing registration and fusion methods.

The paper tackles the problem of non-aligned infrared-visible image pairs by proposing BusReF, a unified framework for registration and fusion, which improves robustness and accuracy through a novel training strategy and gradient-aware network.

In a scenario where multi-modal cameras are operating together, the problem of working with non-aligned images cannot be avoided. Yet, existing image fusion algorithms rely heavily on strictly registered input image pairs to produce more precise fusion results, as a way to improve the performance of downstream high-level vision tasks. In order to relax this assumption, one can attempt to register images first. However, the existing methods for registering multiple modalities have limitations, such as complex structures and reliance on significant semantic information. This paper aims to address the problem of image registration and fusion in a single framework, called BusRef. We focus on Infrared-Visible image registration and fusion task (IVRF). In this framework, the input unaligned image pairs will pass through three stages: Coarse registration, Fine registration and Fusion. It will be shown that the unified approach enables more robust IVRF. We also propose a novel training and evaluation strategy, involving the use of masks to reduce the influence of non-reconstructible regions on the loss functions, which greatly improves the accuracy and robustness of the fusion task. Last but not least, a gradient-aware fusion network is designed to preserve the complementary information. The advanced performance of this algorithm is demonstrated by

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