基于人工神经网络的表情识别人脸检测

M. Owayjan, Roger Achkar, Moussa Iskandar
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引用次数: 24

摘要

提出了一种基于人工神经网络的人脸表情识别系统。它是一个用MATLAB设计和实现的自动化视觉系统。面部表情识别系统通过两个阶段来完成面部表情识别。首先对捕获的图像进行处理,检测人脸,然后对人脸表情进行识别。这两个阶段分五个阶段完成。系统的前两个阶段使用图像处理,特别是Viola-Jones目标检测框架来检测和裁剪人脸。第三阶段处理将裁剪图像的颜色从RGB转换为灰度,并应用适当的平滑滤波器。第四阶段是利用人工神经网络进行特征提取,将提取的特征与训练样本进行比较。最后阶段对给定的输出进行分类,并显示面部表情识别结果。然后判断受试者是快乐、愤怒还是处于中立状态。人工神经网络采用多层感知器(Multi-Layer-Perceptron, MLP)和反向传播算法进行特征提取和分类。它有4097个输入节点,一个包含50个神经元的隐藏层和一个输出层。测试结果表明,该系统可用于解释三种面部表情:快乐、愤怒和中性。它提取出准确的结果,可用于其他领域的研究,如心理评估。最后,结果的高精度允许未来开发实时响应自发面部表情的不同应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face Detection with Expression Recognition using Artificial Neural Networks
This paper presents a Face Detection System with Expression Recognition using Artificial Neural Networks. It is an automated vision system designed and implemented using MATLAB. The Face Detection with Expression Recognition system accomplishes facial expression recognition through two phases. The captured image is processed first to detect the face, and then the facial expression is recognized. These two phases are completed in five stages. The first two stages of the system deal with detecting and cropping the face using image processing, in particular the Viola-Jones object detection framework. The third stage deals with converting the colors of the cropped image from RGB into gray scale and applying the appropriate smoothing filter. The fourth stage consists of feature extraction using Artificial Neural Networks, so as the extracted features are compared with training samples. The final stage classifies the given outputs and shows facial expression recognition results. It then determines whether the subject is happy, angry or in neutral state. The Artificial Neural Network uses Multi-Layer-Perceptron (MLP) with back propagation algorithm for features extraction and classification. It has 4097 input nodes, one hidden layer with 50 neurons, and one output layer. Testing results show that this system can be used for interpreting three facial expressions: happiness, anger and neutral. It extracts accurate outputs that can be employed in other fields of studies such as psychological assessment. Finally, the high precision of the results allow future development of different applications which respond to spontaneous facial expressions in real time.
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