Abstract

The main challenges in face swapping are the preservation and adaptive superimposition of attributes of two images. In this study, the Face Swapping Attention Network (FSA-Net) is proposed to generate photorealistic face swapping. The existing face-swapping methods ignore the blending attributes or mismatch the facial keypoint (cheek, mouth, eye, nose, etc.), which causes artifacts and makes the generated face silhouette non-realistic. To address this problem, a novel reinforced multi-aware attention module, referred to as RMAA, is proposed for handling facial fusion and expression occlusion flaws. The framework includes two stages. In the first stage, a novel attribute encoder is proposed to extract multiple levels of target face attributes and integrate identities and attributes when synthesizing swapped faces. In the second stage, a novel Stochastic Error Refinement (SRE) module is designed to solve the problem of facial occlusion, which is used to repair occlusion regions in a semi-supervised way without any post-processing. The proposed method is then compared with the current state-of-the-art methods. The obtained results demonstrate the qualitative and quantitative outperformance of the proposed method. More details are provided at the footnote link and at .

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