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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >Analysis and synthesis of facial image sequences in model-based image coding
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Analysis and synthesis of facial image sequences in model-based image coding

机译:基于模型的图像编码中人脸图像序列的分析与综合

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摘要

This paper proposes new methods for analyzing image sequences and updating textures of the three-dimensional (3-D) facial model. It also describes a method for synthesizing various facial expressions. These three methods are the key technologies for the model-based image coding system. The input image analysis technique directly and robustly estimates the 3-D head motions and the facial expressions without any two-dimensional (2-D) entity correspondences. This technique resolves the 2-D correspondence mismatch errors and provides quality reproduction of the original images by fully incorporating the synthesis rules. To verify the analysis algorithm, the paper performs quantitative and subjective evaluations. It presents two methods for updating the texture of the facial model to improve the quality of the synthesized images. The first method focuses on the facial parts with large change of brightness according to the various facial expressions for reducing the transmission bit rates. The second method focuses on all changes of brightness caused by the 3-D head motions as well as the facial expressions. The transmission bit rates are estimated according to the update methods. For synthesizing the output images, it describes rules that simulate the facial muscular actions because the muscles cause the facial expressions. These rules more easily synthesize the high-quality facial images that represent the various facial expressions.
机译:本文提出了一种新的方法来分析图像序列并更新三维(3-D)面部模型的纹理。它还描述了一种用于合成各种面部表情的方法。这三种方法是基于模型的图像编码系统的关键技术。输入图像分析技术可直接且可靠地估计3-D头部运动和面部表情,而无需任何二维(2-D)实体对应。该技术解决了2D对应不匹配错误,并通过完全合并合成规则来提供原始图像的质量再现。为了验证分析算法,本文进行了定量和主观评估。它提出了两种更新面部模型纹理以提高合成图像质量的方法。第一种方法着眼于根据各种面部表情的亮度变化较大的面部部分,以降低传输比特率。第二种方法着眼于由3-D头部运动以及面部表情引起的所有亮度变化。根据更新方法来估计传输比特率。为了合成输出图像,它描述了模拟面部肌肉动作的规则,因为肌肉会引起面部表情。这些规则更容易合成代表各种面部表情的高质量面部图像。

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