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Improvement of Feature Localization for Facial Expressions by Adding Noise

机译:通过添加噪声改进面部表情的特征定位

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This paper investigates feature localization abilities upon injecting noise into the convolutional neural network (CNN). The proposed model intended to classify the 7 human emotional states based on facial expressions and it is shown to perform better than the earlier convolutional neural network. The internal representation of learned features emerges and a more accurate localization of those features appears when independent Gaussian noises are added to certain joints during the deep network training. We observed that the weights after the noise contaminated units lead to output that is more definite. Such behavior improves the network generalization through automatic structuration. We confirmed this by emotion classification experiments on KDEF black and Cohen-Kanade + datasets based on facial expression.
机译:本文研究了在将噪声注入卷积神经网络(CNN)中时的特征定位能力。所提出的模型旨在基于面部表情对7种人类情绪状态进行分类,并且表现出比早期的卷积神经网络更好的性能。当在深度网络训练期间将独立的高斯噪声添加到某些关节时,出现了学习特征的内部表示,并且出现了这些特征的更精确定位。我们观察到,被噪声污染的单位后的权重导致输出更加确定。这种行为通过自动结构化改善了网络泛化。我们通过基于面部表情的KDEF black和Cohen-Kanade +数据集上的情感分类实验证实了这一点。

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