Emotion Recognition from Body Expressions with a Neural Network Architecture

Nourhan Elfaramawy, Pablo V. A. Barros, G. I. Parisi, S. Wermter
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引用次数: 22

Abstract

The recognition of emotions plays an important role in our daily life and is essential for social communication. Although multiple studies have shown that body expressions can strongly convey emotional states, emotion recognition from body motion patterns has received less attention than the use of facial expressions. In this paper, we propose a self-organizing neural architecture that can effectively recognize affective states from full-body motion patterns. To evaluate our system, we designed and collected a data corpus named the Body Expressions of Emotion (BEE) dataset using a depth sensor in a human-robot interaction scenario. For our recordings, nineteen participants were asked to perform six different emotions:anger, fear, happiness, neutral, sadness, and surprise. In order to compare our system with human-like performance, we conducted an additional experiment by asking fifteen annotators to label depth map video sequences as one of the six emotion classes. The labeling results from human annotators were compared to the results predicted by our system. Experimental results showed that the recognition accuracy of the system was competitive with human performance when exposed to body motion patterns from the same dataset.
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基于神经网络结构的身体表情情感识别
情感的识别在我们的日常生活中起着重要的作用,对社会交流至关重要。尽管多项研究表明,身体表情可以强烈地传达情绪状态,但与面部表情的使用相比,身体动作模式的情绪识别受到的关注较少。在本文中,我们提出了一种自组织神经结构,可以有效地从全身运动模式中识别情感状态。为了评估我们的系统,我们在人机交互场景中使用深度传感器设计并收集了一个名为身体情绪表达(BEE)数据集的数据语料库。在我们的录音中,19名参与者被要求表现出六种不同的情绪:愤怒、恐惧、快乐、中性、悲伤和惊讶。为了将我们的系统与人类的表现进行比较,我们进行了一个额外的实验,要求15个注释者将深度图视频序列标记为六种情感类别之一。将人类标注者的标注结果与系统预测的结果进行比较。实验结果表明,当暴露于同一数据集的身体运动模式时,该系统的识别精度与人类的识别精度相当。
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