基于多模态融合技术的情绪分类性能分析

Chettiyar Vani Vivekanand
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引用次数: 0

摘要

人脑作为人体的中央处理单元,负责认知、感知、情感、注意、行动、记忆等多种活动。情绪对人类生活的幸福有着重要的影响。获取人类情感的方法对于良好的用户-机器交互至关重要。理解BCI(脑机接口)识别情绪的策略也可以帮助人们更自然地与世界联系。许多识别人类情绪的方法已经被开发出来,利用脑电图信号对快乐、中性、悲伤和愤怒的情绪进行分类,被发现是有效的。激发情绪的方法多种多样,包括向参与者展示快乐和悲伤的面部表情,听情感相关的音乐,视觉效果,有时两者兼而有之。本研究提出了一种基于脑机接口和脑电数据的多模型融合情感分类方法。采用10-20个电极组采集脑电数据。使用基于用户评分的情感分析技术对情绪进行分类。同时,采用自然语言处理(NLP)来提高准确性。该分析将评估参数分为快乐、中性、悲伤和愤怒情绪。基于这些情绪,从准确性和总体准确性两方面评估了所提出模型的性能。该模型的总体准确率为93.33%,并且在识别所有情绪时的表现都有所提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Analysis of Emotion Classification Using Multimodal Fusion Technique
As the central processing unit of the human body, the human brain is in charge of several activities, including cognition, perception, emotion, attention, action, and memory. Emotions have a significant impact on human well-being in their life. Methodologies for accessing emotions of human could be essential for good user-machine interactions. Comprehending BCI (Brain-Computer Interface) strategies for identifying emotions can also help people connect with the world more naturally. Many approaches for identifying human emotions have been developed using signals of EEG for classifying happy, neutral, sad, and angry emotions, discovered to be effective. The emotions are elicited by various methods, including displaying participants visuals of happy and sad facial expressions, listening to emotionally linked music, visuals, and, sometimes, both of these. In this research, a multi-model fusion approach for emotion classification utilizing BCI and EEG data with various classifiers was proposed. The 10-20 electrode setup was used to gather the EEG data. The emotions were classified using the sentimental analysis technique based on user ratings. Simultaneously, Natural Language Processing (NLP) is implemented for increasing accuracy. This analysis classified the assessment parameters as happy, neutral, sad, and angry emotions. Based on these emotions, the proposed model’s performance was assessed in terms of accuracy and overall accuracy. The proposed model has a 93.33 percent overall accuracy and increased performance in all emotions identified.
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