Research and Application of Facial Expression Recognition Based on Attention Mechanism

Xin Zhang, Zhuang Chen, Qingjie Wei
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引用次数: 3

Abstract

The scale of the existing convolutional neural network is getting larger and larger, resulting in too large amounts of parameters, and the structure is not light enough. Moreover, existing convolutional neural networks are difficult to recognize the subtle changes of facial expressions and cannot extract facial expression features accurately. Therefore, the performance of facial expression recognition needs to be improved. To solve the above problems, a new deep learning network model is proposed for facial expression recognition. Based on the deep residual network, the attention mechanism module (Convolutional Block Attention Module, CBAM) is added to the last layer of convolution and the first layer of convolution of the network. The spatial attention mechanism and channel attention mechanism are used to suppress the unimportant feature information and focus on the effective feature information. In the bottom layer, the influence of other factors is eliminated as much as possible, and more attention is paid to the extraction of facial expression features, which enriches the learning of facial expression features and improves the accuracy of facial expression recognition. The method proposed in this paper has been tested and verified on two public data sets FER2013 and CK+, and the results prove that the method has a high accuracy rate.
基于注意机制的面部表情识别研究与应用
现有卷积神经网络的规模越来越大,导致参数量过大,结构不够轻。此外,现有的卷积神经网络难以识别面部表情的细微变化,无法准确提取面部表情特征。因此,人脸表情识别的性能有待提高。针对上述问题,提出了一种新的面部表情识别深度学习网络模型。在深度残差网络的基础上,在网络的最后一层卷积和第一层卷积中加入了注意机制模块(Convolutional Block attention module, CBAM)。利用空间注意机制和通道注意机制抑制不重要的特征信息,关注有效的特征信息。在底层,尽量消除其他因素的影响,更加注重面部表情特征的提取,丰富了面部表情特征的学习,提高了面部表情识别的准确性。本文提出的方法在FER2013和CK+两个公开数据集上进行了测试和验证,结果证明该方法具有较高的准确率。
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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