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首页> 外文期刊>Journal of Computer and Communications >HMM-Based Photo-Realistic Talking Face Synthesis Using Facial Expression Parameter Mapping with Deep Neural Networks
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HMM-Based Photo-Realistic Talking Face Synthesis Using Facial Expression Parameter Mapping with Deep Neural Networks

机译:基于HMM的照片逼真谈话脸部合成使用面部表达参数映射与深神经网络

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This paper proposes a technique for synthesizing a pixel-based photo-realistic talking face animation using two-step synthesis with HMMs and DNNs. We introduce facial expression parameters as an intermediate representation that has a good correspondence with both of the input contexts and the output pixel data of face images. The sequences of the facial expression parameters are modeled using context-dependent HMMs with static and dynamic features. The mapping from the expression parameters to the target pixel images are trained using DNNs. We examine the required amount of the training data for HMMs and DNNs and compare the performance of the proposed technique with the conventional PCA-based technique through objective and subjective evaluation experiments.
机译:本文提出了一种用与HMMS和DNN合成的两步合成合成基于像素的光逼真谈话脸部动画的技术。我们将面部表情参数介绍为中间表示,该中间表示与面部图像的两个输入上下文和输出像素数据具有良好的对应关系。面部表情参数的序列使用具有静态和动态特征的上下文相关的HMM来建模。使用DNN训练从表达式参数到目标像素图像的映射。我们检查HMMS和DNN的培训数据所需数量,并通过客观和主观评估实验将所提出的技术技术与传统PCA的技术进行比较。

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