Emotional analysis of joint sports quality expansion tasks based on multi-modal feature fusion

Huijing Li , Hong Sun
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引用次数: 0

Abstract

A multi-modal feature based motion emotion analysis model based on a fusion deep learning model is proposed for the problem of analyzing the motion emotions of participants in the joint exercise quality expansion task. This model involves three major modalities: EEG signals, peripheral physiological signals, and facial expression signals, and processes and fuses the information of these three main modalities to achieve the effect of processing multi-dimensional motor emotional information. At the same time, this study introduces the design concept of residual networks, using self attention modules and multi head mutual attention modules to process different modal features. The results showed that the combination of peripheral physiological modality and facial expression modality had the highest accuracy among the three modality combinations, with an accuracy rate of 88.8 %. The feature fusion method based on the cascaded residual attention mechanism module has better accuracy and F1 Score performance than other methods. In addition, different emotional states can be effectively identified and distinguished in these three modalities, indicating that the model has a wide range of possibilities in practical applications.

基于多模态特征融合的联合运动质量扩展任务情感分析
针对联合运动质量拓展任务中参与者的运动情绪分析问题,提出了一种基于融合深度学习模型的多模态特征运动情绪分析模型。该模型涉及三种主要模式:该模型涉及脑电信号、外周生理信号和面部表情信号三大模态,并对这三大模态的信息进行处理和融合,以达到处理多维运动情绪信息的效果。同时,本研究引入了残差网络的设计理念,利用自我注意模块和多头相互注意模块来处理不同的模态特征。结果表明,在三种模态组合中,外周生理模态与面部表情模态的组合准确率最高,达到 88.8%。与其他方法相比,基于级联剩余注意力机制模块的特征融合方法具有更好的准确率和 F1 Score 性能。此外,在这三种模态中还能有效识别和区分不同的情绪状态,表明该模型在实际应用中具有广泛的可能性。
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