AI RESEARCH

Learning Cross-View Object Correspondence via Cycle-Consistent Mask Prediction

arXiv CS.CV

ArXi:2602.18996v2 Announce Type: replace We study the task of establishing object-level visual correspondence across different viewpoints in videos, focusing on the challenging egocentric-to-exocentric and exocentric-to-egocentric scenarios. We propose a simple yet effective framework based on conditional binary segmentation, where an object query mask is encoded into a latent representation to guide the localization of the corresponding object in a target video. To encourage robust, view-invariant representations, we.