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A Graph-Structured Representation with BRNN for Static-based Facial Expression Recognition

机译:具有BRNN的图形结构表示,用于静态的面部表情识别

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Facial expression is controlled by facial muscle and can be considered as appearance and geometric variation of key parts. One key challenging issue of static-based facial expression recognition is to capture effective information from a single facial image. In this paper, we propose a graph representation with Bidirectional RNN (BRNN) for static-based facial expression recognition. Each node on the graph represents appearance information around the facial landmarks. Edges represent the geometric information encoded by the distance between two nodes. A bidirectional recurrent neural network utilized to process the graph extracts the appearance and geometric representation. The final representation from BRNN is fed into a fully connected layer and a Softmax layer to infer expressions. Experimental results show that this method achieves significant improvements over the state-of-art methods on three widely used facial databases (Oulu-CASIA, CK+, and MMI), and our method reduces the error rates of the previous best methods by 42.2%, 35.9% and 18.7%, respectively.
机译:面部表情由面部肌肉控制,可以被认为是关键部件的外观和几何变化。静态的面部表情识别的一个关键具有挑战性问题是从单个面部图像捕获有效信息。在本文中,我们提出了一种与双向RNN(BRNN)的图形表示,用于静态的面部表情识别。图中的每个节点都表示面部地标周围的外观信息。边缘表示由两个节点之间的距离编码的几何信息。用于处理图形的双向反复性神经网络提取外观和几何表示。 BRNN的最终表示将被馈入完全连接的层和软墨罩层以推断表达式。实验结果表明,该方法在三种广泛使用的面部数据库(Oulu-Casia,CK +和MMI)上实现了对最先进的方法的显着改进,我们的方法将先前最佳方法的错误率降低了42.2%,分别为35.9%和18.7%。

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