基于多头注意机制的多模态情感分析

Chen Xi, G. Lu, Jingjie Yan
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引用次数: 34

摘要

多模态情感分析仍然是一个很有前途的研究领域,有许多问题需要解决。其中,提取合理的单模态特征,设计稳健的多模态情感分析模型是最基本的问题。本文提出了从视觉、音频和文本中提取情感特征的新方法,并利用这些特征验证了基于多头注意机制的多模态情感分析模型。在多模态意见话语数据集(mod)语料库和CMU多模态意见级情感强度(CMU- mosi)语料库上对该模型进行了评估,用于多模态情感分析。实验结果证明了该方法的有效性。mod和MOSI数据集的精度分别为90.43%和82.71%。与最先进的车型相比,性能提高了约2分和0.4分。
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Multimodal sentiment analysis based on multi-head attention mechanism
Multimodal sentiment analysis is still a promising area of research, which has many issues needed to be addressed. Among them, extracting reasonable unimodal features and designing a robust multimodal sentiment analysis model is the most basic problem. This paper presents some novel ways of extracting sentiment features from visual, audio and text, furthermore use these features to verify the multimodal sentiment analysis model based on multi-head attention mechanism. The proposed model is evaluated on Multimodal Opinion Utterances Dataset (MOUD) corpus and CMU Multi-modal Opinion-level Sentiment Intensity (CMU-MOSI) corpus for multimodal sentiment analysis. Experimental results prove the effectiveness of the proposed approach. The accuracy of the MOUD and MOSI datasets is 90.43% and 82.71%, respectively. Compared to the state-of-the-art models, the improvement of the performance are approximately 2 and 0.4 points.
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