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ID 119667
著者
任, 福継 University of Electronic Science and Technology of China 徳島大学 教育研究者総覧 KAKEN研究者をさがす
Zhou, Yang-Yang Tokushima University
Deng, Jia-Wen University of Electronic Science and Technology of China
Feng, Duo Tokushima University
She, Tian-Hao Tokushima University
Jiao, Zi-Yun University of Electronic Science and Technology of China
Liu, Zheng Tokushima University
Li, Tai-Hao Zhejiang Lab
Nakagawa, Satoshi The University of Tokyo
資料タイプ
学術雑誌論文
抄録
Owing to rapid advancements in artificial intelligence, the role of emotion recognition has become paramount in human–computer interaction. Traditional approaches often reduce this intricate task to a mere classification problem by relying heavily on perceptual pattern-recognition techniques. However, this simplification overlooks the dynamic and multifaceted nature of human emotions. According to theories in emotion psychology, existing pattern recognition methods primarily capture external emotional expressions—termed “external emotional energy” (EEE)—rather than the nuanced underlying emotions. To address this gap, we introduce the evolutionary mental state transition model (EMSTM). In the initial phase, EMSTM employs standard pattern-recognition algorithms to extract EEE from multi-modal human expressions. Subsequently, it leverages a mental state transition network to model the dynamic transitions between emotional states, thereby predicting real-time emotions with higher fidelity. We validated the efficacy of EMSTM through experiments on 2 multi-label emotion datasets: CMU Multimodal Opinion Sentiment and Emotion Intensity (CMU-MOSEI) and Ren Chinese Emotion Corpus (Ren-CECps). The results indicate a marked improvement over conventional methods. By synergistically combining principles from psychology with computational techniques, EMSTM offers a holistic and accurate framework for real-time emotion tracking, aligning closely with the dynamic mental processes that govern human emotions.
掲載誌名
Intelligent Computing
ISSN
27715892
出版者
Zhejiang Lab|American Association for the Advancement of Science
3
開始ページ
0075
発行日
2024-04-08
権利情報
Distributed under a Creative Commons Attribution License 4.0 (https://creativecommons.org/licenses/by/4.0/).
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言語
eng
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部局
理工学系