基于双通道卷积神经网络的人脸表情识别

Dennis Hamester, Pablo V. A. Barros, S. Wermter
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引用次数: 106

摘要

提出了一种基于多通道卷积神经网络(mcnn)的面部表情识别新架构。两个硬编码的特征提取器被单个通道取代,该通道以无监督的方式作为卷积自编码器(CAE)进行部分训练。另外一个包含标准CNN的频道保持不变。来自两个通道的信息在一个完全连接的层中收敛,然后用于分类。我们在JAFFE数据集上执行两个不同的实验(留一和十倍交叉验证)来评估我们的体系结构。我们与之前使用硬编码Sobel特征的模型的比较表明,无监督学习的额外信息通道可以显着提高准确性并减少整体训练时间。此外,实验结果与文献中的基准进行了比较,表明我们的方法提供了最先进的面部表情识别率。我们的方法比以前发表的使用手工特征的方法要好得多。
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Face expression recognition with a 2-channel Convolutional Neural Network
A new architecture based on the Multi-channel Convolutional Neural Network (MCCNN) is proposed for recognizing facial expressions. Two hard-coded feature extractors are replaced by a single channel which is partially trained in an unsupervised fashion as a Convolutional Autoencoder (CAE). One additional channel that contains a standard CNN is left unchanged. Information from both channels converges in a fully connected layer and is then used for classification. We perform two distinct experiments on the JAFFE dataset (leave-one-out and ten-fold cross validation) to evaluate our architecture. Our comparison with the previous model that uses hard-coded Sobel features shows that an additional channel of information with unsupervised learning can significantly boost accuracy and reduce the overall training time. Furthermore, experimental results are compared with benchmarks from the literature showing that our method provides state-of-the-art recognition rates for facial expressions. Our method outperforms previously published methods that used hand-crafted features by a large margin.
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