2021
DOI: 10.48550/arxiv.2109.02974
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FuseFormer: Fusing Fine-Grained Information in Transformers for Video Inpainting

Abstract: Transformer, as a strong and flexible architecture for modelling long-range relations, has been widely explored in vision tasks. However, when used in video inpainting that requires fine-grained representation, existed method still suffers from yielding blurry edges in detail due to the hard patch splitting. Here we aim to tackle this problem by proposing FuseFormer, a Transformer model designed for video inpainting via fine-grained feature fusion based on novel Soft Split and Soft Composition operations. The … Show more

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