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Hauptverfasser: Wu, Xuecheng, Tian, Mengmeng, Zhai, Lanhang
Format: Preprint
Veröffentlicht: 2022
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Online-Zugang:https://arxiv.org/abs/2208.11346
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author Wu, Xuecheng
Tian, Mengmeng
Zhai, Lanhang
author_facet Wu, Xuecheng
Tian, Mengmeng
Zhai, Lanhang
contents With the fast development of artificial intelligence and short videos, emotion recognition in short videos has become one of the most important research topics in human-computer interaction. At present, most emotion recognition methods still stay in a single modality. However, in daily life, human beings will usually disguise their real emotions, which leads to the problem that the accuracy of single modal emotion recognition is relatively terrible. Moreover, it is not easy to distinguish similar emotions. Therefore, we propose a new approach denoted as ICANet to achieve multimodal short video emotion recognition by employing three different modalities of audio, video and optical flow, making up for the lack of a single modality and then improving the accuracy of emotion recognition in short videos. ICANet has a better accuracy of 80.77% on the IEMOCAP benchmark, exceeding the SOTA methods by 15.89%.
format Preprint
id arxiv_https___arxiv_org_abs_2208_11346
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle ICANet: A Method of Short Video Emotion Recognition Driven by Multimodal Data
Wu, Xuecheng
Tian, Mengmeng
Zhai, Lanhang
Computer Vision and Pattern Recognition
With the fast development of artificial intelligence and short videos, emotion recognition in short videos has become one of the most important research topics in human-computer interaction. At present, most emotion recognition methods still stay in a single modality. However, in daily life, human beings will usually disguise their real emotions, which leads to the problem that the accuracy of single modal emotion recognition is relatively terrible. Moreover, it is not easy to distinguish similar emotions. Therefore, we propose a new approach denoted as ICANet to achieve multimodal short video emotion recognition by employing three different modalities of audio, video and optical flow, making up for the lack of a single modality and then improving the accuracy of emotion recognition in short videos. ICANet has a better accuracy of 80.77% on the IEMOCAP benchmark, exceeding the SOTA methods by 15.89%.
title ICANet: A Method of Short Video Emotion Recognition Driven by Multimodal Data
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2208.11346