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Main Authors: Wei, Qinglan, Zhou, Yaqi, Xiao, Longhui, Zhang, Yuan
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2312.04279
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author Wei, Qinglan
Zhou, Yaqi
Xiao, Longhui
Zhang, Yuan
author_facet Wei, Qinglan
Zhou, Yaqi
Xiao, Longhui
Zhang, Yuan
contents YouTube Shorts, a new section launched by YouTube in 2021, is a direct competitor to short video platforms like TikTok. It reflects the rising demand for short video content among online users. Social media platforms are often flooded with short videos that capture different perspectives and emotions on hot events. These videos can go viral and have a significant impact on the public's mood and views. However, short videos' affective computing was a neglected area of research in the past. Monitoring the public's emotions through these videos requires a lot of time and effort, which may not be enough to prevent undesirable outcomes. In this paper, we create the first multimodal dataset of short video news covering hot events. We also propose an automatic technique for audio segmenting and transcribing. In addition, we improve the accuracy of the multimodal affective computing model by about 4.17% by optimizing it. Moreover, a novel system MSEVA for emotion analysis of short videos is proposed. Achieving good results on the bili-news dataset, the MSEVA system applies the multimodal emotion analysis method in the real world. It is helpful to conduct timely public opinion guidance and stop the spread of negative emotions. Data and code from our investigations can be accessed at: http://xxx.github.com.
format Preprint
id arxiv_https___arxiv_org_abs_2312_04279
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle MSEVA : A System for Multimodal Short Videos Emotion Visual Analysis
Wei, Qinglan
Zhou, Yaqi
Xiao, Longhui
Zhang, Yuan
Social and Information Networks
YouTube Shorts, a new section launched by YouTube in 2021, is a direct competitor to short video platforms like TikTok. It reflects the rising demand for short video content among online users. Social media platforms are often flooded with short videos that capture different perspectives and emotions on hot events. These videos can go viral and have a significant impact on the public's mood and views. However, short videos' affective computing was a neglected area of research in the past. Monitoring the public's emotions through these videos requires a lot of time and effort, which may not be enough to prevent undesirable outcomes. In this paper, we create the first multimodal dataset of short video news covering hot events. We also propose an automatic technique for audio segmenting and transcribing. In addition, we improve the accuracy of the multimodal affective computing model by about 4.17% by optimizing it. Moreover, a novel system MSEVA for emotion analysis of short videos is proposed. Achieving good results on the bili-news dataset, the MSEVA system applies the multimodal emotion analysis method in the real world. It is helpful to conduct timely public opinion guidance and stop the spread of negative emotions. Data and code from our investigations can be accessed at: http://xxx.github.com.
title MSEVA : A System for Multimodal Short Videos Emotion Visual Analysis
topic Social and Information Networks
url https://arxiv.org/abs/2312.04279