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Hand-Crafted Feature Guided Deep Learning for Facial Expression Recognition

机译:手工制作的功能指导深度学习面部表情识别

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A number of facial expression recognition algorithms based on hand-crafted features and deep neutral networks have been developed. Motivated by the similarity between the hand-crafted features and features learned by deep network, a new feature loss is proposed to embed the information of hand-crafted features into the training process of network, which tries to reduce the difference between the two features. Based on the feature loss, a general framework for embedding the traditional feature information was developed and tested using CK+, JAFFE and FER2013 datasets. Experimental results show that the proposed network achieves much better accuracy than the original hand-crafted feature and the network without using our feature loss. When compared with other algorithms in literature, our network also achieved the best performance on CK+ dataset, i.e. 97.35% accuracy has been achieved.
机译:已经开发了许多基于手工制作特征和深度中性网络的面部表情识别算法。通过深度网络学到的手工制作特征和特征之间的相似性,提出了一种新的功能损失来将手工制作功能信息嵌入到网络的培训过程中,这试图减少两个特征之间的差异。基于功能损失,使用CK +,Jaffe和FER2013数据集开发和测试了嵌入传统特征信息的一般框架。实验结果表明,建议的网络比原始手工制作功能和网络实现更好的准确性,而无需使用我们的功能损失。与文献中的其他算法相比,我们的网络还达到了CK +数据集的最佳性能,即97.35 %精度已经实现。

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