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Facial expression recognition algorithm based on parameter adaptive initialization of CNN and LSTM

机译:基于CNN和LSTM参数自适应初始化的面部表情识别算法

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摘要

In view of the high dimensionality, nonrigidity, multiscale variation and the influence of illumination and angle on facial expressions, it is quite difficult to obtain facial expression images or videos using computers and analyze facial morphology and changes to accurately obtain the emotional changes of the subjects. Existing facial expression recognition algorithms have the following problems in the application process: the existing shallow feature extraction model has lost a lot of effective feature information and low recognition accuracy. The facial expression recognition method based on deep learning has problems such as overfitting, gradient explosion and parameter initialization. Therefore, this paper develops a facial expression recognition algorithm based on the deep learning method. An adaptive model parameter initialization based on the multilayer maxout network linear activation function is proposed to initialize the convolutional neural network (CNN) and the long-short-term memory network (LSTM) method. It can effectively overcome the gradient disappearance and gradient explosion problems in the deep learning model training process. At the same time, the convolutional neural network with an LSTM memory unit is used to extract the related information from the image sequence, and the facial expression judgment is based on a single-frame image and historical-related information. However, the top-level structure of the CNN model is a fully connected feedforward neural network, which undertakes the task of expression classification. Therefore, the SVM classification method replaces the top-level classifier to further improve the expression classification accuracy. Experiments show that the facial expression recognition method proposed in this paper not only accurately identifies various expressions but also has good adaptive ability. This is because the method achieves the adaptive initialization of the parameters of the deep learning model construction process and also analyzes the relevance of the expression database expression, thereby improving the accuracy of expression recognition.
机译:鉴于高维度,非刚性,多尺度变化以及照明和角度对面部表情的影响,使用计算机获取面部表情图像或视频并分析面部形态和变化以准确地获得对象的情感变化是非常困难的。现有的面部表情识别算法在应用过程中存在以下问题:现有的浅层特征提取模型失去了很多有效的特征信息,并且识别精度低。基于深度学习的面部表情识别方法存在过拟合,梯度爆炸和参数初始化等问题。因此,本文提出了一种基于深度学习方法的面部表情识别算法。提出了一种基于多层maxout网络线性激活函数的自适应模型参数初始化方法,以初始化卷积神经网络(CNN)和长短期记忆网络(LSTM)方法。它可以有效地克服深度学习模型训练过程中的梯度消失和梯度爆炸问题。同时,使用带LSTM存储单元的卷积神经网络从图像序列中提取相关信息,面部表情判断基于单帧图像和历史相关信息。但是,CNN模型的顶层结构是一个完全连接的前馈神经网络,它承担表达式分类的任务。因此,SVM分类方法取代了顶级分类器,从而进一步提高了表达分类的准确性。实验表明,本文提出的人脸表情识别方法不仅可以准确识别各种表情,而且具有良好的自适应能力。这是因为该方法实现了深度学习模型构建过程的参数的自适应初始化,并且还分析了表情数据库表情的相关性,从而提高了表情识别的准确性。

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