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The Effects of Regularization on Learning Facial Expressions with Convolutional Neural Networks

机译:正则化对卷积神经网络学习表情的影响

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Convolutional neural networks (CNNs) have become effective instruments in facial expression recognition. Very good results can be achieved with deep CNNs possessing many layers and providing a good internal representation of the learned data. Due to the potentially high complexity of CNNs on the other hand they are prone to overfitting and as a result, regularization techniques are needed to improve the performance and minimize overfitting. However, it is not yet clear how these regularization techniques affect the learned representation of faces. In this paper we examine the effects of novel regularization techniques on the training and performance of CNNs and their learned features. We train a CNN using dropout, max pooling dropout, batch normalization and different combinations of these three. We show that a combination of these methods can have a big impact on the performance of a CNN, almost halving its validar tion error. A visualization technique is applied to the CNNs to highlight their activations for different inputs, illustrating a significant difference between a standard CNN and a regularized CNN.
机译:卷积神经网络(CNN)已成为面部表情识别中的有效工具。具有多层结构且提供学习数据的良好内部表示的深层CNN可以达到非常好的结果。另一方面,由于CNN的潜在高度复杂性,它们易于过度拟合,因此,需要使用正则化技术来提高性能并最大程度地减少过度拟合。然而,目前尚不清楚这些正则化技术如何影响学习到的人脸表示。在本文中,我们研究了新型正则化技术对CNN的训练和性能及其学习功能的影响。我们使用辍学,最大合并辍学,批处理规范化以及这三者的不同组合来训练CNN。我们表明,这些方法的组合可以对CNN的性能产生很大的影响,几乎将其验证错误减半。可视化技术应用于CNN,以突出显示其针对不同输入的激活,从而说明了标准CNN与常规CNN之间的显着差异。

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