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An automatic 3D expression recognition framework based on sparse representation of conformal images

机译:基于稀疏表示的全成形图像稀疏表示的自动3D表达式识别框架

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We propose a general and fully automatic framework for 3D facial expression recognition by modeling sparse representation of conformal images. According to Riemann Geometry theory, a 3D facial surface S embedded in ℝ3, which is a topological disk, can be conformally mapped to a 2D unit disk D through the discrete surface Ricci Flow algorithm. Such a conformal mapping induces a unique and intrinsic surface conformal representation denoted by a pair of functions defined on D, called conformal factor image (CFI) and mean curvature image (MCI). As facial expression features, CFI captures the local area distortion of S induced by the conformal mapping; MCI characterizes the geometry information of S. To model sparse representation of conformal images for expression classification, both CFI and MCI are further normalized by a Mobius transformation. This transformation is defined by the three main facial landmarks (i.e. nose tip, left and right inner eye corners) which can be detected automatically and precisely. Expression recognition is carried out by the minimal sparse expression-class-dependent reconstruction error over the conformal image based expression dictionary. Extensive experimental results on the BU-3DFER dataset demonstrate the effectiveness and generalization of the proposed framework.
机译:通过建模共形图像的稀疏表示,为3D面部表情识别提出一般和全自动框架。根据Riemann几何论,嵌入嵌入的3D面部表面S是拓扑盘的ℝ 3 ,可以通过离散表面Ricci流量算法来共同地映射到2D单元盘D。这种共形映射引起由在D上定义的一对函数表示的独特和固有的表面共形式表示,称为共形因子图像(CFI)和平均曲率图像(MCI)。作为面部表情特征,CFI捕获了由保形映射引起的局域的局部变形; MCI表征了S.的几何信息。为了模型稀疏表示表达式分类的共形图像,CFI和MCI都被Mobius转换进一步归一化。该转变由三个主要的面部地标(即鼻尖,左右内眼角)定义,可以自动且精确地检测。表达式识别由基于共形图像的表达式字典上的最小稀疏表达式类依赖的重建误差进行。 Bu-3DFER数据集上的广泛实验结果证明了所提出的框架的有效性和泛化。

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