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Main Authors: Yu, Zheng, Wang, Yaohua, Cui, Siying, Zhang, Aixi, Zheng, Wei-Long, Wang, Senzhang
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.22771
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author Yu, Zheng
Wang, Yaohua
Cui, Siying
Zhang, Aixi
Zheng, Wei-Long
Wang, Senzhang
author_facet Yu, Zheng
Wang, Yaohua
Cui, Siying
Zhang, Aixi
Zheng, Wei-Long
Wang, Senzhang
contents Facial parts swapping aims to selectively transfer regions of interest from the source image onto the target image while maintaining the rest of the target image unchanged. Most studies on face swapping designed specifically for full-face swapping, are either unable or significantly limited when it comes to swapping individual facial parts, which hinders fine-grained and customized character designs. However, designing such an approach specifically for facial parts swapping is challenged by a reasonable multiple reference feature fusion, which needs to be both efficient and effective. To overcome this challenge, FuseAnyPart is proposed to facilitate the seamless "fuse-any-part" customization of the face. In FuseAnyPart, facial parts from different people are assembled into a complete face in latent space within the Mask-based Fusion Module. Subsequently, the consolidated feature is dispatched to the Addition-based Injection Module for fusion within the UNet of the diffusion model to create novel characters. Extensive experiments qualitatively and quantitatively validate the superiority and robustness of FuseAnyPart. Source codes are available at https://github.com/Thomas-wyh/FuseAnyPart.
format Preprint
id arxiv_https___arxiv_org_abs_2410_22771
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle FuseAnyPart: Diffusion-Driven Facial Parts Swapping via Multiple Reference Images
Yu, Zheng
Wang, Yaohua
Cui, Siying
Zhang, Aixi
Zheng, Wei-Long
Wang, Senzhang
Computer Vision and Pattern Recognition
Facial parts swapping aims to selectively transfer regions of interest from the source image onto the target image while maintaining the rest of the target image unchanged. Most studies on face swapping designed specifically for full-face swapping, are either unable or significantly limited when it comes to swapping individual facial parts, which hinders fine-grained and customized character designs. However, designing such an approach specifically for facial parts swapping is challenged by a reasonable multiple reference feature fusion, which needs to be both efficient and effective. To overcome this challenge, FuseAnyPart is proposed to facilitate the seamless "fuse-any-part" customization of the face. In FuseAnyPart, facial parts from different people are assembled into a complete face in latent space within the Mask-based Fusion Module. Subsequently, the consolidated feature is dispatched to the Addition-based Injection Module for fusion within the UNet of the diffusion model to create novel characters. Extensive experiments qualitatively and quantitatively validate the superiority and robustness of FuseAnyPart. Source codes are available at https://github.com/Thomas-wyh/FuseAnyPart.
title FuseAnyPart: Diffusion-Driven Facial Parts Swapping via Multiple Reference Images
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2410.22771