Abstract

All human movements can be effectively represented with labanotation, which is simple to read and preserve. However, manually recording the labanotation takes a long time, so figuring out how to use the labanotation to accurately and quickly record and preserve traditional dance movements is a key research question. An automatic labanotation generation algorithm based on DL (deep learning) is proposed in this study. The BVH file is first analyzed, and the data are then converted. On this foundation, a CNN (convolutional neural network) algorithm for generating the dance spectrum of human lower-limb movements is proposed, which is very good at learning action space information. The algorithm performs admirably in terms of classification and recognition. Finally, a spatial segmentation-based automatic labanotation generation algorithm is proposed. To begin, every frame of data is converted into a symbol sequence using spatial law, resulting in a very dense motion sequence. The motion sequence is then regulated according to the minimum beat of motion obtained through wavelet analysis. To arrive at the final result, the classifier is used to determine whether each symbol is reserved or not. As a result, we will be able to create more accurate dance music for simple human movements.

Highlights

  • Labanotation is a type of dance music created by Hungarian Laban that records human movements with various elements and symbols

  • When motion capture technology first became available, it was quickly applied to the recording of dance movements

  • The designed features and upper- and lower-limb movements recognition algorithm are integrated into the automatic generation platform of dance spectrum, and an end-to-end automatic generation system from motion capture data to labanotation is realized

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Summary

Introduction

Labanotation is a type of dance music created by Hungarian Laban that records human movements with various elements and symbols. Labanotation is made up of lines and symbols, just like music staff It is widely used in recording and teaching dance movements [1] because it can accurately and conveniently record and analyze all human movements. The designed features and upper- and lower-limb movements recognition algorithm are integrated into the automatic generation platform of dance spectrum, and an end-to-end automatic generation system from motion capture data to labanotation is realized. E proposed CNN-based method’s superiority in processing dynamic time-series data, as well as the high efficiency of lower- and middle-limb motion generation in labanotation, is demonstrated by experimental comparison and analysis of the proposed method and other recognition algorithms. Literature [14] puts forward the method of generating labanotation of upper-limb movements by mapping labanotation symbols in three-dimensional coordinate space, which is a spatial analysis based on Laban notation principle. There is still a long way to go before the practical teaching level

Overview of Labanotation and Motion Capture
Research Method
Automatic Generation Algorithm of Labanotation Based on DL
Upper-Limb Motion Segmentation and Labanotation
Analysis and Discussion
Findings
Conclusion
Full Text
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