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DeViT: Deformed Vision Transformers in Video Inpainting

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arxiv 2209.13925 v1 pith:JTQKO7YI submitted 2022-09-28 cs.CV

DeViT: Deformed Vision Transformers in Video Inpainting

classification cs.CV
keywords attentiondeformationdeformeddepthfeatureinpaintingintroducematching
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper proposes a novel video inpainting method. We make three main contributions: First, we extended previous Transformers with patch alignment by introducing Deformed Patch-based Homography (DePtH), which improves patch-level feature alignments without additional supervision and benefits challenging scenes with various deformation. Second, we introduce Mask Pruning-based Patch Attention (MPPA) to improve patch-wised feature matching by pruning out less essential features and using saliency map. MPPA enhances matching accuracy between warped tokens with invalid pixels. Third, we introduce a Spatial-Temporal weighting Adaptor (STA) module to obtain accurate attention to spatial-temporal tokens under the guidance of the Deformation Factor learned from DePtH, especially for videos with agile motions. Experimental results demonstrate that our method outperforms recent methods qualitatively and quantitatively and achieves a new state-of-the-art.

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