AI RESEARCH
Occlusion-Aware Physics-Semantic Keyframe Selection for Robust Video Editing
arXiv CS.CV
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ArXi:2605.23192v1 Announce Type: new Video editing has recently achieved remarkable progress with diffusion-based generative models, enabling diverse object-level manipulations from natural language instructions. However, existing methods often struggle under occlusion, viewpoint changes, and fast object motion, where unreliable visual observations lead to inaccurate localization, temporal flickering, and inconsistent edits. In this work, we identify the absence of reliable visual anchors as a fundamental bottleneck in occlusion-robust video editing.