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Facial Expression Recognition Based on VGGNet Convolutional Neural Network

机译:基于VGGNet卷积神经网络的表情识别。

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Aiming at the low recognition rate of traditional convolutional neural network in facial expression database, I propose a facial expression recognition method based on VGGNet deep convolutional neural network. With a deeper network architecture and a 3*3 small convolution kernel and a 2*2 small pool kernel, the recognition rate is significantly improved, and the number of parameters is only slightly larger than that of the shallow layer. In order to further reduce the number of parameters, only the first fully-connected layer of the original network is retained; in order to prevent over-fitting, the data set is multiple croped and dropout strategy is introduced before the fully-connected layer. Finally, the Softmax classifier is used for classification and recognition in the network. Experimental results show that the recognition rate of the algorithm in FER2013 database is 73.06%.
机译:针对面部表情数据库中传统卷积神经网络识别率低的问题,提出了一种基于VGGNet深度卷积神经网络的面部表情识别方法。使用更深的网络体系结构,3 * 3的小卷积核和2 * 2的小池核,识别率显着提高,并且参数的数量仅比浅层的稍大。为了进一步减少参数的数量,仅保留原始网络的第一个完全连接的层。为了防止过度拟合,对数据集进行了多次裁剪,并在完全连接的层之前引入了丢弃策略。最后,Softmax分类器用于网络中的分类和识别。实验结果表明,该算法在FER2013数据库中的识别率为73.06%。

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