Multimodal Emotion Recognition and State Analysis of Classroom Video and Audio Based on Deep Neural Network

Mingyong Li, Mingyue Liu, Zhengbo Jiang, Zongwei Zhao, Jiayan Zhang, Mingyuan Ge, Huiming Duan, Yanxia Wang
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引用次数: 3

Abstract

In the process of learning, learners will express their emotions through a variety of forms, facial expressions and voice are more obvious, which are most easily obtained through computers. In the previous methods, it is mainly based on a single modal, such as expression, speech, text and so on. Due to the diversity of information, the accuracy rate of multimodal recognition is higher than that of single modal recognition. Therefore, this paper proposed a DNN-based multimodal learning emotion analysis method which combines video and speech to detect students’ learning emotion in real time. We use this method to automatically identify learning emotions in primary school English classroom. According to different learning emotions, the PAD emotion scale was used to correspond learning emotions with learning states. Teachers can judge students’ learning state according to the change of students’ learning emotions, so as to adjust teaching methods and strategies in time.
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基于深度神经网络的课堂音视频多模态情感识别与状态分析
在学习的过程中,学习者会通过多种形式来表达自己的情绪,面部表情和声音是比较明显的,这些都是最容易通过电脑获得的。在以前的方法中,主要是基于单一的模态,如表达、语音、文本等。由于信息的多样性,多模态识别的准确率高于单模态识别。因此,本文提出了一种基于dnn的多模态学习情绪分析方法,将视频和语音相结合,实时检测学生的学习情绪。我们将此方法应用于小学英语课堂学习情绪的自动识别。根据不同的学习情绪,采用PAD情绪量表将学习情绪与学习状态进行对应。教师可以根据学生学习情绪的变化来判断学生的学习状态,从而及时调整教学方法和策略。
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