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MILG:Realistic lip-sync video generation with audio-modulated image inpainting
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作者 Han Bao Xuhong Zhang +4 位作者 Qinying Wang Kangming Liang Zonghui Wang Shouling Ji Wenzhi Chen 《Visual Informatics》 EI 2024年第3期71-81,共11页
Existing lip synchronization(lip-sync)methods generate accurately synchronized mouths and faces in a generated video.However,they still confront the problem of artifacts in regions of non-interest(RONI),e.g.,backgroun... Existing lip synchronization(lip-sync)methods generate accurately synchronized mouths and faces in a generated video.However,they still confront the problem of artifacts in regions of non-interest(RONI),e.g.,background and other parts of a face,which decreases the overall visual quality.To solve these problems,we innovatively introduce diverse image inpainting to lip-sync generation.We propose Modulated Inpainting Lip-sync GAN(MILG),an audio-constraint inpainting network to predict synchronous mouths.MILG utilizes prior knowledge of RONI and audio sequences to predict lip shape instead of image generation,which can keep the RONI consistent.Specifically,we integrate modulated spatially probabilistic diversity normalization(MSPD Norm)in our inpainting network,which helps the network generate fine-grained diverse mouth movements guided by the continuous audio features.Furthermore,to lower the training overhead,we modify the contrastive loss in lipsync to support small-batch-size and few-sample training.Extensive experiments demonstrate that our approach outperforms the existing state-of-the-art of image quality and authenticity while keeping lip-sync. 展开更多
关键词 lip-sync Image inpainting Face generation Modulated SPD normalization
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