Bharatanatyam舞蹈注释与检索系统

Soumen Paul, Rounak Saha, Swarup Padhi, Srijoni Majumdar, P. Das, K. S. Rao
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引用次数: 0

摘要

本文提出了一个名为NrityaManch的注释和检索应用程序,专门用于印度古典舞。我们主要选择Bharatanatyam dance进行应用程序开发。利用本体技术捕获舞蹈图像的标注细节,对舞蹈数据库进行结构化组织。在prot 5.5.0中开发了一个OWL2本体,使用HermiT 1.4.4.456推理器对其进行验证以保持一致性。提供了对舞蹈图像进行手动注释的用户界面。最初,我们在注释过程中重点关注舞者的细节、舞蹈的细节和静态舞蹈姿势的元素,比如hasta mudra。所有注释细节都保存在RDF/XML文件中。提供了一个搜索窗口,方便了两种类型的搜索——自然语言查询搜索和紧密查询搜索。本研究利用命名实体识别(NER)管道机制,从自然语言查询中提取关键字。系统自动生成一个SPARQL查询,该查询应用于RDF语料库,以便检索不同的图像。NER管道机制对我们的舞蹈数据集实现了80%的准确率。系统检索功能的平均f值为0.8547。该系统旨在帮助舞蹈学习者在一个专门的地方找到舞蹈资源,也将有助于印度古典舞的保存。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NrityaManch: An Annotation and Retrieval System for Bharatanatyam Dance
This paper presents an annotation and retrieval application named NrityaManch dedicated explicitly to the Indian classical dance. We primarily choose Bharatanatyam dance for the application development. We exploit ontology technique which captures dance image’s annotation details and structurally organizes the dance database. An OWL2 ontology is developed in Protégé 5.5.0 which is validated using HermiT 1.4.3.456 reasoner to maintain consistency. A user interface is provided for the manual annotation of dance images. Initially, we focus on dancer details, dance details, and elements of static dance posture like hasta mudra during the annotation. All annotation details are saved in RDF/XML file. A search window is provided, which facilitates two types of search - natural language query search and tight query search. Named Entity Recognition (NER) pipeline mechanism is utilized in this work which facilitates keyword extraction from natural language queries. A SPARQL query is automatically generated by the system which is applied to the RDF corpus in order to retrieve distinct images. The NER pipeline mechanism achieves an accuracy of 80% for our dance dataset. The system achieves an average f-score value of 0.8547 for the retrieval functionality. The proposed system intends to help dance learners to find dance resources in a dedicated place and will also help in Indian classical dance preservation.
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