Multimodal Emotion Cognition Method Based on Multi-Channel Graphic Interaction

Baisheng Zhong
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Abstract

The relationship between the emotional components associated with images and text is a crucial way of multimodal emotion analysis. However, most of the present multimodel affective cognitive models simply associate the features of images and texts without thoroughly investigating their interactions, resulting in poor recognition. Therefore, a multimodel emotion cognition method based on multi-channel graphic interaction is proposed. Text context features are extracted, scene and image information is encoded, and useful features are obtained. Based on these results, the modal alignment module be applied to obtain information about affective regions and words, and then the cross-modal gating module be applied to combine the multimodel features. In addition, we tested extensively on three open datasets, achieving an accuracy of 0.8122 for the MSA-single dataset, 0.7307 for the MSA-MULTIPLE dataset, and 0.7159 for TumEmo. The results show that this method is effective for multimodal emotion detection.
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基于多通道图形交互的多模态情感认知方法
与图像和文本相关的情感成分之间的关系是多模态情感分析的重要途径。然而,目前大多数多模型情感认知模型只是简单地将图像和文本的特征联系起来,而没有深入研究它们之间的相互作用,导致识别效果不佳。因此,本文提出了一种基于多通道图形交互的多模型情感认知方法。提取文本上下文特征,对场景和图像信息进行编码,从而获得有用的特征。在此基础上,应用模态对齐模块获取情感区域和词语信息,然后应用跨模态门控模块组合多模态特征。此外,我们还在三个开放数据集上进行了广泛测试,MSA-single 数据集的准确率为 0.8122,MSA-MULTIPLE 数据集的准确率为 0.7307,TumEmo 的准确率为 0.7159。结果表明,该方法对多模态情感检测非常有效。
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