Audio-to-Facial Landmarks Generator for Talking Face Video Synthesis

Dasol Jeong, Injae Lee, J. Paik
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Abstract

Audio driven talking face methods have been studied to process the accuracy lip synchronization. However, how to create movement of head poses and personalized facial features is a challenging problem. In order to solve this problem, it is necessary to identify the context based on the audio, create the head pose and lip motion, and synthesize the personalized face. We introduce a facial landmark generation method including audio-based head pose and lip motion using an audio transformer. The audio transformer extracts audio features containing contextual information and creates generalized head pose and lip motion landmarks. In order to synthesize personalized features on the generated landmarks, a talking face video is generated by applying the method learned through meta-learning. With just a few single images, even unknown faces can be spoken in the audio you want. In addition, the proposed method is applicable to various languages, and enables photo-realistic synthesis and fast inference.
音频到面部地标生成器说话的脸视频合成
研究了音频驱动的说话脸方法来实现准确的唇同步。然而,如何创造头部姿势的运动和个性化的面部特征是一个具有挑战性的问题。为了解决这个问题,有必要根据音频识别上下文,创建头部姿势和嘴唇运动,并合成个性化的脸部。我们介绍了一种基于音频的面部标志生成方法,包括基于音频的头部姿势和嘴唇运动。音频转换器提取包含上下文信息的音频特征,并创建通用的头部姿势和嘴唇运动地标。为了在生成的地标上综合个性化的特征,应用元学习的方法生成了一个会说话的人脸视频。只需几张单独的图像,即使是不知名的面孔也可以在你想要的音频中说话。此外,该方法适用于多种语言,能够实现逼真的合成和快速推理。
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