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Promoting Single-Modal Optical Flow Network for Diverse Cross-Modal Flow Estimation

Shili Zhou, Weimin Tan, Bo Yan

2022Proceedings of the AAAI Conference on Artificial Intelligence25 citationsDOIOpen Access PDF

Abstract

In recent years, optical flow methods develop rapidly, achieving unprecedented high performance. Most of the methods only consider single-modal optical flow under the well-known brightness-constancy assumption. However, in many application systems, images of different modalities need to be aligned, which demands to estimate cross-modal flow between the cross-modal image pairs. A lot of cross-modal matching methods are designed for some specific cross-modal scenarios. We argue that the prior knowledge of the advanced optical flow models can be transferred to the cross-modal flow estimation, which may be a simple but unified solution for diverse cross-modal matching tasks. To verify our hypothesis, we design a self-supervised framework to promote the single-modal optical flow networks for diverse corss-modal flow estimation. Moreover, we add a Cross-Modal-Adapter block as a plugin to the state-of-the-art optical flow model RAFT for better performance in cross-modal scenarios. Our proposed Modality Promotion Framework and Cross-Modal Adapter have multiple advantages compared to the existing methods. The experiments demonstrate that our method is effective on multiple datasets of different cross-modal scenarios.

Topics & Concepts

ModalModal analysis using FEMComputer scienceOptical flowModality (human–computer interaction)Flow (mathematics)Matching (statistics)Modal analysisArtificial intelligenceModal testingEngineeringMathematicsImage (mathematics)Finite element methodStructural engineeringStatisticsGeometryChemistryPolymer chemistryAdvanced Vision and ImagingImage Enhancement TechniquesAdvanced Image and Video Retrieval Techniques
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