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AniPortrait: Audio-Driven Synthesis of Photorealistic Portrait Animation

About

In this study, we propose AniPortrait, a novel framework for generating high-quality animation driven by audio and a reference portrait image. Our methodology is divided into two stages. Initially, we extract 3D intermediate representations from audio and project them into a sequence of 2D facial landmarks. Subsequently, we employ a robust diffusion model, coupled with a motion module, to convert the landmark sequence into photorealistic and temporally consistent portrait animation. Experimental results demonstrate the superiority of AniPortrait in terms of facial naturalness, pose diversity, and visual quality, thereby offering an enhanced perceptual experience. Moreover, our methodology exhibits considerable potential in terms of flexibility and controllability, which can be effectively applied in areas such as facial motion editing or face reenactment. We release code and model weights at https://github.com/scutzzj/AniPortrait

Huawei Wei, Zejun Yang, Zhisheng Wang• 2024

Related benchmarks

TaskDatasetResultRank
Talking Head GenerationHDTF (test)
FID21.33
73
Talking Head GenerationHDTF
FID17.603
48
Portrait Animation (Self-reenactment)VFHQ (test)
FVD211
23
Portrait Image AnimationHDTF (test)
FID36.826
23
Portrait Animation (Cross-reenactment)FFHQ source + VFHQ driving (test)
CSIM0.6894
18
Self-reenactment portrait animationMEAD 59 (test)
CSIM0.8904
18
Talking Face GenerationHDTF (test)
SSIM0.75
16
Talking Head GenerationVFHQ (test)
FID36.58
16
Talking Head GenerationCelebV-HQ
FID69.98
15
Talking head video generationHDTF
FID78.284
14
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