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A Multi-modal Approach for Emotion Recognition of TV Drama Characters Using Image and Text

机译:基于图像和文本的多模式电视剧角色情感识别方法

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Research on facial emotion recognition has long been popular for various purposes. This paper investigates the recognition of the character emotions, to assist in understanding the story. The goal of this research is to classify the facial images of the characters in the Korean TV series ‘Misaeng: The Incomplete’1 into 7 emotions: Angry, Disgust, Fear, Happy, Neutral, Sad, and Surprise. We built a multi-modal deep learning model which utilizes facial images as well as textual information describing the situations, to classify the facial images. Our experiments indicate that employing multi-modality enhances the performance of facial emotion recognition of story characters.We concludes with discussions and future work.
机译:面部情感识别的研究长期以来因各种目的而受到欢迎。本文研究了角色情感的识别,以帮助理解故事。这项研究的目的是将韩国电视连续剧“ Misaeng:残缺不全” 1中人物的面部图像分类为7种情绪:愤怒,厌恶,恐惧,快乐,中立,悲伤和惊奇。我们建立了一个多模式深度学习模型,该模型利用面部图像以及描述情况的文本信息对面部图像进行分类。我们的实验表明,采用多模式可以增强故事人物的面部表情识别性能。最后,我们进行了讨论和今后的工作。

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