Micro-expression Analysis by Fusing Deep Convolutional Neural Network and Optical Flow

Qiuyu Li, Jun Yu, T. Kurihara, Shu Zhan
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引用次数: 16

Abstract

Micro-expression is a kind of brief facial movements which could not be controlled by nervous system. Micro-expression indicates that a person is hiding his truly emotion consciously. Micro-expression analysis has various potential applications in public security and clinical medicine. Researches are focused on the automatic micro-expression recognition, because it is hard to recognize the micro-expression by the naked eye. This research proposes a novel algorithm for automatic micro-expression analysis which combines a deep multi-task convolutional network for detecting the facial landmarks and a fused deep convolutional network for estimating the optical flow features of the micro-expression. Firstly, the deep multi-task convolutional network is employed to detect facial landmarks with the manifold related tasks for dividing the facial region. Furthermore, a fused convolutional network is applied for extracting the optical flow features from the facial regions which contain the muscle changes when the micro-expression presents. Finally, a revised optical flow feature is applied for refining the information of the features and a Support Vector Machine classifier is adopted for recognizing and detecting the micro-expression. The result of experiments on two spontaneous micro-expression database proves that our method achieved competitive performance in micro-expression recognition and detection.
融合深度卷积神经网络和光流的微表情分析
微表情是一种不能被神经系统控制的短暂的面部动作。微表情表明一个人在有意识地隐藏自己的真实情绪。微表情分析在公安、临床医学等领域具有广泛的应用前景。微表情的自动识别由于人眼难以识别微表情而成为研究的热点。本研究提出了一种新的微表情自动分析算法,该算法将用于人脸特征检测的深度多任务卷积网络与用于估计微表情光流特征的融合深度卷积网络相结合。首先,利用深度多任务卷积网络检测人脸特征点,并利用流形相关任务对人脸区域进行划分;在此基础上,应用融合卷积网络提取微表情出现时面部肌肉变化区域的光流特征。最后,采用修正光流特征对特征信息进行细化,并采用支持向量机分类器对微表情进行识别和检测。在两个自发微表情数据库上的实验结果表明,该方法在微表情识别和检测方面取得了较好的效果。
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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