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Discriminative Feature Learning Using Two-Stage Training Strategy for Facial Expression Recognition

机译:采用两阶段培训策略对面部表情识别的歧视特征学习

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Although deep convolutional neural networks (CNNs) have achieved the state-of-the-arts for facial expression recognition (FER), FER is still challenging due to two aspects: class imbalance and hard expression examples. However, most existing FER methods recognize facial expression images by training the CNN models with cross-entropy (CE) loss in a single stage, which have limited capability to deal with these problems because each expression example is assigned equal weight of loss. Inspired by the recently proposed focal loss which reduces the relative loss for those well-classified expression examples and pay more attention to those misclassified ones, we can mitigate these problems by introducing the focal loss into the existing FER system when facing imbalanced data or hard expression examples. Considering that the focal loss allows the network to further extract discriminative features based on the learned feature-separating capability, we present a two-stage training strategy utilizing CE loss in the first stage and focal loss in the second stage to boost the FER performance. Extensive experiments have been conducted on two well-known FER datasets called CK+ and Oulu-CASIA. We gain improvements compared with the common one-stage training strategy and achieve the state-of-the-art results on the datasets in terms of average classification accuracy, which demonstrate the effectiveness of our proposed two-stage training strategy.
机译:虽然深度卷积神经网络(CNNS)已经实现了对面部表情识别(FER)的最先进的,但由于两个方面,FER仍然挑战:类别不平衡和硬表达示例。然而,大多数现有FER方法通过在单个阶段中训练具有跨熵(CE)损耗的CNN模型来识别面部表情图像,这具有有限的能力来处理这些问题,因为每个表达式示例被分配相同的损耗。受到最近提出的焦点损失,减少了这些良好分类的表达式示例的相对损失,并更加关注那些错误分类的焦点,我们可以通过在面向现有的数据或硬表达式中引入现有的FER系统中的焦距来减轻这些问题例子。考虑到焦点损失允许网络基于学习的特征分离能力进一步提取歧视特征,我们提出了一个两级训练策略,利用第一个阶段的CE损失和第二阶段的焦点来提升FER性能。已经在两个称为CK +和Oulu-Casia的众所周知的FER数据集上进行了广泛的实验。与普通的一级培训策略相比,我们获得改进,并在平均分类准确性方面实现了数据集的最新结果,这表明了我们提出的两级培训策略的有效性。

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