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Deep Learning Approach for Emotion Recognition from Human Body Movements with Feedforward Deep Convolution Neural Networks

机译:具有馈电深卷积神经网络的人体运动情感识别的深度学习方法

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Nowadays, analysis of human body movements for emotion recognition is essential for social communication. Non-verbal communication methods like body movements, facial expression, gestures and eye movements are used in several applications. Among them emotion recognition from body movements has an advantage of recognize emotions of person from any camera view and also recognize emotions, if person is too far from camera. The body movements can strongly convey emotional states than other studies. In this paper, emotional state recognizes from full body motion patterns using feedforward deep convolution neural network architecture with different parameter. The proposed system can be evaluated by emotion dataset (University of YORK) with 15 types of emotions and GEMEP corpus dataset with 5 emotions. The experimental result showed the better recognition accuracy of the proposed system.
机译:如今,对情感认可的人体运动分析对于社交沟通至关重要。在若干应用中使用了身体运动,面部表情,手势和眼睛运动等非言语通信方法。其中,来自身体运动的情感认可具有从任何相机视图中识别人的情绪,并且如果人们离相机太远,也识别情绪。身体运动能够强烈地传达比其他研究的情绪状态。在本文中,情绪状态使用具有不同参数的前馈深卷积神经网络架构来识别来自全身运动模式。拟议的系统可以由情感数据集(约克大学)评估,其中15种情绪和Gemep语料库数据集,具有5种情绪。实验结果表明了所提出的系统的识别准确性。

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