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논문 기본 정보

자료유형
학술저널
저자정보
Miracle Udurume (Kumoh National Institute of Technology) Angela Caliwag (Kumoh National Institute of Technology) Wansu Lim (Kumoh National Institute of Technology) Gwigon Kim (Kumoh National Institute of Technology)
저널정보
한국정보통신학회JICCE Journal of information and communication convergence engineering Journal of information and communication convergence engineering Vol.20 No.3
발행연도
2022.9
수록면
174 - 180 (7page)

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초록· 키워드

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Emotion recognition is an essential component of complete interaction between human and machine. The issues related to emotion recognition are a result of the different types of emotions expressed in several forms such as visual, sound, and physiological signal. Recent advancements in the field show that combined modalities, such as visual, voice and electroencephalography signals, lead to better result compared to the use of single modalities separately. Previous studies have explored the use of multiple modalities for accurate predictions of emotion; however the number of studies regarding real-time implementation is limited because of the difficulty in simultaneously implementing multiple modalities of emotion recognition. In this study, we proposed an emotion recognition system for real-time emotion recognition implementation. Our model was built with a multithreading block that enables the implementation of each modality using separate threads for continuous synchronization. First, we separately achieved emotion recognition for each modality before enabling the use of the multithreaded system. To verify the correctness of the results, we compared the performance accuracy of unimodal and multimodal emotion recognitions in real-time. The experimental results showed real-time user emotion recognition of the proposed model. In addition, the effectiveness of the multimodalities for emotion recognition was observed. Our multimodal model was able to obtain an accuracy of 80.1% as compared to the unimodality, which obtained accuracies of 70.9, 54.3, and 63.1%.

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Abstract
Ⅰ. INTRODUCTION
Ⅱ. PROPOSED METHOD
Ⅲ. RESULTS AND DISCUSSION
Ⅳ. CONCLUSIONS
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