Enhanced MobileNet and transfer learning for facial emotion recognition

Aicha Nouisser, Ramzi Zouari, M. Kherallah
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Abstract

Facial emotion recognition plays an important role in identifying the psychological state of persons. In this context, we proposed an efficient system for facial emotion recognition based on hybrid MobileN et and Residual block architecture. This system proceeds by eliminating irrelevant images and cropping the remaining ones on face region. Moreover, we applied both under-sampling and SMOTE algorithms to overcome the problem of unbalanced dataset. On the other hand, several techniques were applied to prevent overfitting such as early stopping, mini batch shuffling and focal loss. The experiments were done on the public dataset Fer2013 based on transfer learning technique and showed very promising results that achieved the accuracy of 95.64%.
增强MobileNet和面部情感识别的迁移学习
面部情绪识别在识别人的心理状态方面起着重要作用。在此背景下,我们提出了一种基于mobilenet和残差块混合架构的高效面部情绪识别系统。该系统通过去除不相关图像并裁剪面部区域的剩余图像进行处理。此外,我们采用欠采样和SMOTE算法来克服数据集不平衡的问题。另一方面,采用了早期停止、小批量洗牌和焦点丢失等技术来防止过拟合。在Fer2013的公共数据集上进行了基于迁移学习技术的实验,取得了很好的结果,准确率达到了95.64%。
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