Abstract

Dance emotion recognition technology is of great significance for the digitalization, virtual performance, inheritance and protection of folk dance. Based on the mechanism that emotion expression in dance performance can be fully expressed through the strength and rhythm of dance movements, a novel dance emotion expression method is proposed to train hybrid deep learning neural network, to effectively identify the seven basic dance emotions of fear, anger, boredom, excitement, joy, relaxation and sadness. First, in order to fully express the emotions contained in the dance movements, this paper defines a dance emotion expression method through Laban Movement Analysis (LMA) method, which includes the characteristic parameters of the three aspects of body structure, spatial orientation and force effect, and converts the original dance movement data into three characteristic expression parameters to obtain dance emotion data. Then, Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM) hybrid neural network models are used to test and train dance emotion data. Finally, in order to verify the applicability of the CNN-LSTM model, decision tree, random forest, CNN and LSTM are established and compared for accuracy. The results show that it is feasible to identify dance emotion from the perspective of dance movement, and the CNN-LSTM model is of high accuracy.

Highlights

  • In recent years, emotion recognition has gradually become an important research direction in the field of humancomputer interaction

  • Reference [13] based on Laban Movement Analysis (LMA), the relationship between human movement and emotion was studied, and the results showed that there was a good correlation between LMA characteristics and emotion

  • The development of dance emotion recognition research is inseparable from the support of the dance action database

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Summary

INTRODUCTION

Emotion recognition has gradually become an important research direction in the field of humancomputer interaction. The LMA method is widely used in emotion recognition as a description method of limb movements, for example, Ajili I [12] proposed a new human action description vector based on Laban action analysis method to recognize human expressions and actions on video images. Based on the applicability of Laban motion analysis method in body movements and emotional expression, this paper uses LMA method to analyze dance movements, extract LMA characteristic values from the movement data and obtain dance emotion data. The main contributions of this paper are as follows: 1) A dance movement expression method based on LMA is proposed This method is used to extract features from dance movement data to express dance emotions, and describes characteristic parameters from three aspects: limb structure, spatial orientation and force effect. The experimental results show that the feature data using world coordinates and euler angles simultaneously has a high accuracy

EXPRESSION METHOD OF DANCE MOVEMENTS BASED ON LMA
NETWORK MODEL TRAINING
CNN MODEL TRAINING
LSTM MODEL TRAINING
CONCLUSION
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