Ensemble Algorithm of Convolution Neural Networks for Enhancing Facial Expression Recognition

Gwo-Chuan Lee, Zi-Yang Li, Tsai-Wei Li
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Abstract

Artificial intelligence (AI) cooperates with multiple industries to improve the overall industry framework. Especially, human emotion recognition plays an indispensable role in supporting medical care, psychological counseling, crime prevention and detection, and crime investigation. The research on emotion recognition includes emotion-specific intonation patterns, literal expressions of emotions, and facial expressions. Recently, the deep learning model of facial emotion recognition aims to capture tiny changes in facial muscles to provide greater recognition accuracy. Hybrid models in facial expression recognition have been constantly proposed to improve the performance of deep learning models in these years. In this study, we proposed an ensemble learning algorithm for the accuracy of the facial emotion recognition model with three deep learning models: VGG16, InceptionResNetV2, and EfficientNetB0. To enhance the performance of these benchmark models, we applied transfer learning, fine-tuning, and data augmentation to implement the training and validation of the Facial Expression Recognition 2013 (FER-2013) Dataset. The developed algorithm finds the best-predicted value by prioritizing the InceptionResNetV2. The experimental results show that the proposed ensemble learning algorithm of priorities edges up 2.81% accuracy of the model identification. The future extension of this study ventures into the Internet of Things (IoT), medical care, and crime detection and prevention.
增强面部表情识别的卷积神经网络集成算法
人工智能(AI)与多个行业合作,完善整个行业框架。尤其是人类情感识别在辅助医疗、心理咨询、犯罪预防与侦查、犯罪侦查等方面发挥着不可或缺的作用。情绪识别的研究包括特定情绪的语调模式、情绪的文字表达和面部表情。最近,面部情绪识别的深度学习模型旨在捕捉面部肌肉的微小变化,以提供更高的识别精度。近年来,人脸表情识别中的混合模型不断被提出,以提高深度学习模型的性能。在这项研究中,我们提出了一种集成学习算法来提高面部情绪识别模型的准确性,该算法采用了三个深度学习模型:VGG16、InceptionResNetV2和EfficientNetB0。为了提高这些基准模型的性能,我们应用迁移学习、微调和数据增强来实现面部表情识别2013 (FER-2013)数据集的训练和验证。开发的算法通过对InceptionResNetV2进行优先排序来找到最佳预测值。实验结果表明,所提出的优先边缘集成学习算法的模型识别准确率提高了2.81%。这项研究的未来扩展将涉足物联网(IoT)、医疗保健以及犯罪侦查和预防。
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