An Automatic Detection of Fundamental Postures in Vietnamese Traditional Dances

Ngan-Khanh Chau, T. Ma
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Abstract

Preserving and promoting the intangible cultural heritage is one of the essential problems of interest. In addition, the cultural heritage of the world has been accumulated and early respected during the development of human society. For preservation of traditional dances, this paper is one of the significant processed steps in our research sequence to build an intelligent storage repository that would help to manage the large-scale heterogeneous digital contents efficiently, particularly in dance domain. We concentrated on classifying the fundamental movements of Vietnamese Traditional Dances (VTDs), which are the foundations of automatically detecting the motions of the dancer's body parts. Moreover, we also propose a framework to classify basic movements through coupling a sequential aggregation of the DeepCNN architectures (to extract the features) and Support Vector Machine (to classify the movements). In this study, we detect and extract automatically the primary movements of VTDs, we then store the extracted concepts into an ontology that serves for reasoning, queryanswering, and searching dance videos.
越南传统舞蹈基本姿势的自动识别
保护和弘扬非物质文化遗产是当今社会关注的核心问题之一。此外,世界文化遗产是在人类社会发展的过程中积累起来的,并很早就受到了尊重。为了保护传统舞蹈,本文是我们研究序列中重要的处理步骤之一,以建立一个智能存储库,有助于有效地管理大规模异构数字内容,特别是舞蹈领域的数字内容。我们专注于分类越南传统舞蹈(VTDs)的基本动作,这是自动检测舞者身体部位运动的基础。此外,我们还提出了一个框架,通过耦合DeepCNN架构的顺序聚合(提取特征)和支持向量机(分类运动)来对基本运动进行分类。在这项研究中,我们自动检测和提取vtd的主要动作,然后将提取的概念存储到一个本体中,该本体用于推理、查询和搜索舞蹈视频。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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