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Expression recognition using directional gradient local pattern and gradient-based ternary texture patterns

机译:使用方向性梯度局部模式和基于梯度的三元纹理模式进行表情识别

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Facial expression is an important channel in human communication. Therefore, the problem of facial expression recognition (FER) attracts the growing attention of the research community in the recent years. In this context, the critical point for is the possibility to detect accurately the emotional features. An effective facial feature descriptor is an important issue in the design of a successful expression recongnition algorithm. Although recently there have been certain progress in this domain, extracting a face feature descriptor stable under changing environment is still a difficult task. In this paper, we illustrate empirically the algorithm of person-independent facial expression recognition based on statistical local features such as Directional gradient Local Pattern (DGLP) and gradient local ternary pattern (GLTP). The combined DGLP and GLTP operator encodes the local texture of an image by computing the gradient magnitudes of local neighborhood as well as the angle of direction of the edge and converts those values into feature vector. The results obtained indicate that the combined DGLP and GLTP method performs better than other methods used for facial expression recognition problems in high-textured facial regions.
机译:面部表情是人类交流的重要渠道。因此,近年来,面部表情识别(FER)问题引起了研究界的越来越多的关注。在这种情况下,关键点是准确检测情绪特征的可能性。有效的面部特征描述符是成功表情识别算法设计中的重要问题。尽管最近在该领域已经取得了一定进展,但是提取在变化的环境下稳定的面部特征描述符仍然是困难的任务。在本文中,我们从经验上说明了基于统计局部特征(例如方向梯度局部模式(DGLP)和梯度局部三元模式(GLTP))的独立于人的面部表情识别算法。组合的DGLP和GLTP运算符通过计算局部邻域的梯度大小以及边缘的方向角对图像的局部纹理进行编码,并将这些值转换为特征向量。所得结果表明,结合使用DGLP和GLTP的方法比用于高纹理面部区域中的面部表情识别问题的其他方法表现更好。

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