嵌入式人脸和面部表情识别的概率框架

A. Colmenarez, B. Frey, Thomas S. Huang
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引用次数: 51

摘要

我们提出了一种贝叶斯识别框架,其中整个面部的模型通过面部特征位置和外观的模型来增强。人脸识别和面部表情识别使用最大似然决策进行。该算法找到模型和面部表情,使测试图像的可能性最大化。在该框架中,通过面部表情匹配对面部外观匹配进行改进。此外,由于表情引起的面部特征变化与面部变形一起使用。模式,共同进行表情识别。在我们目前的实现中,人脸被分为9个面部特征,分组在4个区域中,在视频片段中自动检测和跟踪。在主成分子空间上使用高斯分布对特征图像进行建模。培训过程受到监督;我们使用人们的视频片段,其中的面部表情被手工分割和标记。我们报告了使用18个人和6种表情的视频数据库进行面部和面部表情识别的结果。
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A probabilistic framework for embedded face and facial expression recognition
We present a Bayesian recognition framework in which a model of the whole face is enhanced by models of facial feature position and appearances. Face recognition and facial expression recognition are carried out using maximum likelihood decisions. The algorithm finds the model and facial expression that maximizes the likelihood of a test image. In this framework, facial appearance matching is improved by facial expression matching. Also, changes in facial features due to expressions are used together with facial deformation. Patterns to jointly perform expression recognition. In our current implementation, the face is divided into 9 facial features grouped in 4 regions which are detected and tracked automatically in video segments. The feature images are modeled using Gaussian distributions on a principal component sub-space. The training procedure is supervised; we use video segments of people in which the facial expressions have been segmented and labeled by hand. We report results on face and facial expression recognition using a video database of 18 people and 6 expressions.
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