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Hand-Crafted Feature Guided Deep Learning for Facial Expression Recognition

机译:手工功能指导的深度学习进行面部表情识别

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摘要

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特征和深度中性网络的面部表情识别算法。基于手工特征与深度网络学习特征之间的相似性,提出了一种新的特征损失算法,将手工特征信息嵌入到网络的训练过程中,以减少两者之间的差异。基于特征损失,使用CK +,JAFFE和FER2013数据集开发并测试了嵌入传统特征信息的通用框架。实验结果表明,所提出的网络比原始的手工制作的特征具有更高的精度,并且该网络不使用我们的特征损失。与文献中的其他算法相比,我们的网络在CK +数据集上也达到了最佳性能,即已达到97.35%的准确率。

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