Improved optimizer with deep learning model for emotion detection and classification

被引:0
作者
Joseph, Willson C. [1 ,2 ]
Kathrine, G. Jaspher Willsie [1 ]
Shanmuganathan, Vimal [3 ]
Sumathi, S. [4 ]
Pelusi, Danilo [5 ]
Valencia, Xiomara Patricia Blanco [6 ]
Verdú, Elena [6 ]
机构
[1] Department of Computer Science and Engineering, Karunya Institute of Technology and Sciences, Coimbatore
[2] Department of Computer Science and Engineering, Adi Shankara Institute of Engineering and Technology, Kerala
[3] Department of Artificial Intelligence and Data Science, Sri Eshwar College of Engineering, Coimbatore
[4] Department of CSE (Artificial Intelligence and Machine Learning), Sri Eshwar College of Engineering, Coimbatore
[5] Communication Sciences, University of Teramo, Coste Sant’agostino Campus, Teramo
[6] Universidad Internacional de La Rioja, La Rioja, Logroño
关键词
classification; dynamic weight; facial emotion; gradient wavelet anisotropic filter; improved Botox optimization algorithm; kernel residual 50; SqueezeNet; walrus optimization;
D O I
10.3934/mbe.2024290
中图分类号
学科分类号
摘要
Facial emotion recognition (FER) is largely utilized to analyze human emotion in order to address the needs of many real-time applications such as computer-human interfaces, emotion detection, forensics, biometrics, and human-robot collaboration. Nonetheless, existing methods are mostly unable to offer correct predictions with a minimum error rate. In this paper, an innovative facial emotion recognition framework, termed extended walrus-based deep learning with Botox feature selection network (EWDL-BFSN), was designed to accurately detect facial emotions. The main goals of the EWDL-BFSN are to identify facial emotions automatically and effectively by choosing the optimal features and adjusting the hyperparameters of the classifier. The gradient wavelet anisotropic filter (GWAF) can be used for image pre-processing in the EWDL-BFSN model. Additionally, SqueezeNet is used to extract significant features. The improved Botox optimization algorithm (IBoA) is then used to choose the best features. Lastly, FER and classification are accomplished through the use of an enhanced optimization-based kernel residual 50 (EK-ResNet50) network. Meanwhile, a nature-inspired metaheuristic, walrus optimization algorithm (WOA) is utilized to pick the hyperparameters of EK-ResNet50 network model. The EWDL-BFSN model was trained and tested with publicly available CK+ and FER-2013 datasets. The Python platform was applied for implementation, and various performance metrics such as accuracy, sensitivity, specificity, and F1-score were analyzed with state-of-the-art methods. The proposed EWDL-BFSN model acquired an overall accuracy of 99.37 and 99.25% for both CK+ and FER-2013 datasets and proved its superiority in predicting facial emotions over state-of-the-art methods. ©2024 the Author(s), licensee AIMS Press.
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收藏
页码:6631 / 6657
页数:26
相关论文
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