A short video sentiment analysis model based on multimodal feature fusion

Hongyu Shi
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Abstract

With the development of the internet, the number of short video platform users has increased quickly. People's social entertainment mode has gradually changed from text to short video, generating many multimodal data. Therefore, traditional single-modal sentiment analysis can no longer fully adapt to multimodal data. To address this issue, this study proposes a short video sentiment analysis model based on multimodal feature fusion. This model analyzes the text, speech, and visual content in the video. Meanwhile, the information of the three modalities is integrated through a multi-head attention mechanism to analyze and classify emotions. The experimental results showed that when the training set size was 500, the recognition accuracy of the multimodal sentiment analysis model based on modal contribution recognition and multi-task learning was 0.96. The F1 score was 98, and the average absolute error value was 0.21. When the validation set size was 400, the recognition time of the multimodal sentiment analysis model based on modal contribution recognition and multi-task learning was 2.1 s. When the iterations were 60, the recognition time of the multimodal sentiment analysis model based on modal contribution recognition and multi-task learning was 0.9 s. The experimental results show that the proposed multimodal sentiment analysis model based on modal contribution recognition and multi-task learning has good model performance and can accurately identify emotions in short videos.

基于多模态特征融合的短视频情感分析模型
随着互联网的发展,短视频平台用户数量迅速增加。人们的社交娱乐方式逐渐从文字转变为短视频,产生了许多多模态数据。因此,传统的单一模态情感分析已不能完全适应多模态数据。针对这一问题,本研究提出了一种基于多模态特征融合的短视频情感分析模型。该模型分析视频中的文本、语音和视觉内容。同时,通过多头关注机制整合三种模态的信息,对情感进行分析和分类。实验结果表明,当训练集大小为 500 时,基于模态贡献识别和多任务学习的多模态情感分析模型的识别准确率为 0.96。F1 得分为 98,平均绝对误差为 0.21。当验证集大小为 400 时,基于模态贡献识别和多任务学习的多模态情感分析模型的识别时间为 2.1 s;当迭代次数为 60 时,基于模态贡献识别和多任务学习的多模态情感分析模型的识别时间为 0.9 s。
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