Traditional African Dances Preservation Using Deep Learning Techniques

IF 1.4 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING Proceedings of the ACM on computer graphics and interactive techniques Pub Date : 2022-09-06 DOI:10.1145/3533608
A. E. Odefunso, E. Bravo, Victor Y. Chen
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引用次数: 2

Abstract

Human action recognition continues to evolve and improve through deep learning techniques. There have been studies with some success in the field of action recognition, but only a few of them have focused on traditional dance. This is because dance actions, especially in traditional African dance, are long and involve fast movements. This research proposes a novel framework that applies data science algorithms to the field of cultural preservation by applying various deep learning techniques to identify, classify, and model traditional African dances from videos. Traditional dances are an important part of African culture and heritage. Digital preservation of these dances in their multitude and form is a challenging problem. The dance dataset was constituted from freely available YouTube videos. Four traditional African dances were used for the dance classification process: Adowa, Swange, Bata, and Sinte dance. Five Convolutional Neural Network (CNN) models were used for the classification and achieved an accuracy between 93% and 98%. Additionally, human pose estimation algorithms were applied to Sinte dance. A model of Sinte dance that can be exported to other environments was obtained.
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利用深度学习技术保护非洲传统舞蹈
人类行为识别通过深度学习技术不断发展和改进。在动作识别领域已有一些成功的研究,但针对传统舞蹈的研究较少。这是因为舞蹈动作,特别是在传统的非洲舞蹈中,都是长而快速的动作。本研究提出了一个新的框架,通过应用各种深度学习技术来识别、分类和模拟视频中的传统非洲舞蹈,将数据科学算法应用于文化保护领域。传统舞蹈是非洲文化遗产的重要组成部分。数字保存这些舞蹈的数量和形式是一个具有挑战性的问题。舞蹈数据集是由免费的YouTube视频组成的。四种传统的非洲舞蹈被用于舞蹈分类过程:Adowa, Swange, Bata和Sinte舞蹈。使用5种卷积神经网络(CNN)模型进行分类,准确率在93% ~ 98%之间。此外,将人体姿态估计算法应用于Sinte舞蹈。获得了一个可以导出到其他环境的Sinte舞蹈模型。
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