基于深度学习策略的人体运动识别

Muthana S. Mahdi
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引用次数: 0

摘要

如今,以情感识别为目的的人体运动研究是社会交流中绝对必要的组成部分。一些不同的语境需要运用非语言交际策略,如手势、眼球运动、面部表情和肢体语言。其中,基于肢体动作的情绪检测。它还可以识别一个人的情绪,即使他们离相机太远。其他研究表明,肢体语言比语言更能有效地表达情绪状态。在这项研究中,情绪状态是由人体整个身体的运动决定的。采用了深度卷积神经网络的结构,并考虑了多个参数的设置。约克大学的情绪数据集(包含15种不同的情绪)和GEMEP语料库数据集(包含5种情绪)都可以用来评估拟议的系统。实验结果表明,该系统具有较高的识别精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Movements Recognition in the Human Body Based on Deep Learning Strategies
These days, the study of human body movements for the purpose of emotion identification is an absolutely necessary component of social communication. Several different contexts call for the implementation of non-verbal communication strategies such as gestures, eye movements, facial expressions, and body language. Among them, emotion detection based on body movements. It can also identify the emotions of a person even if they are too far away from the camera. Other studies have shown that body language can express emotional states more effectively than words can. In this research study, an emotional state is determined by the human motion of the entire body. The architecture of a deep convolution neural network is used, and multiple parameter settings are considered. Both the University of York's emotion dataset, which includes 15 different kinds of emotions, and dataset of GEMEP corpus, which includes five emotions, can be used to assess the proposed system. The results of the experiments demonstrated that the proposed system has a higher degree of recognition accuracy.
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