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Manifold based analysis of facial expression

机译:基于流形的面部表情分析

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We propose a novel approach for modeling, tracking, and recognizing facial expressions on a low-dimensional expression manifold. A modified Lipschitz embedding is developed to embed aligned facial features in a low-dimensional space, while keeping the main structure of the manifold. In the embedded space, a complete expression sequence becomes a path on the expression manifold, emanating from a center that corresponds to the neutral expression. As an offline training stage, facial contour features are first clustered in this space, using a mixture model. For each cluster in the low-dimensional space, a specific ASM model is learned, in order to avoid incorrect matching due to non-linear image variations. A probabilistic model of transitions between the clusters and paths in the embedded space is then learned. Given a new expression sequence, we use ICondensation to track facial features, while recognizing facial expressions simultaneously, within the common probabilistic framework. Experimental results demonstrate that our probabilistic facial expression model on the manifold significantly improves facial deformation tracking and expression recognition. We also synthesize image sequences of changing expressions through the manifold model.
机译:我们提出了一种用于在低维表达流形上建模,跟踪和识别面部表情的新颖方法。经过改进的Lipschitz嵌入技术可以将对齐的面部特征嵌入到低维空间中,同时保持流形的主要结构。在嵌入空间中,完整的表达序列成为表达歧管上的一条路径,该路径从与中性表达相对应的中心发出。作为离线训练阶段,首先使用混合模型将面部轮廓特征聚集在该空间中。对于低维空间中的每个群集,将学习一个特定的ASM模型,以避免由于非线性图像变化而导致的不正确匹配。然后学习嵌入式空间中簇和路径之间的转移概率模型。给定一个新的表达顺序,我们使用ICondensation跟踪面部特征,同时在通用概率框架内同时识别面部表情。实验结果表明,我们在多方面的概率面部表情模型显着改善了面部变形跟踪和表情识别。我们还通过流形模型合成了变化表达的图像序列。

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