Facial expression recognition via deep learning

Yadan Lv, Zhiyong Feng, Chao Xu
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引用次数: 158

Abstract

This paper mainly studies facial expression recognition with the components by face parsing (FP). Considering the disadvantage that different parts of face contain different amount of information for facial expression and the weighted function are not the same for different faces, an idea is proposed to recognize facial expression using components which are active in expression disclosure. The face parsing detectors are trained via deep belief network and tuned by logistic regression. The detectors first detect face, and then detect nose, eyes and mouth hierarchically. A deep architecture pretrained with stacked autoencoder is applied to facial expression recognition with the concentrated features of detected components. The parsing components remove the redundant information in expression recognition, and images don't need to be aligned or any other artificial treatment. Experimental results on the Japanese Female Facial Expression database and extended Cohn-Kanade dataset outperform other methods and show the effectiveness and robustness of this algorithm.
基于深度学习的面部表情识别
本文主要研究了基于人脸解析的人脸表情成分识别方法。针对人脸不同部位包含的面部表情信息量不同、权重函数不同的缺点,提出了一种利用表情披露活跃分量识别面部表情的思路。人脸分析检测器通过深度信念网络进行训练,并通过逻辑回归进行调整。检测器首先检测人脸,然后依次检测鼻子、眼睛和嘴巴。将层叠式自编码器预训练的深度结构应用于人脸表情识别中,对检测到的特征进行集中。解析组件删除了表达式识别中的冗余信息,并且图像不需要对齐或任何其他人工处理。在日本女性面部表情数据库和扩展的Cohn-Kanade数据集上的实验结果优于其他方法,表明了该算法的有效性和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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