Unlocking a multimodal archive of Southern Chinese martial arts through embodied cues

IF 1.7 3区 管理学 Q2 INFORMATION SCIENCE & LIBRARY SCIENCE
Yumeng Hou, Fad Seydou, S. Kenderdine
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引用次数: 0

Abstract

PurposeDespite being an authentic carrier of various cultural practices, the human body is often underutilised to access the knowledge of human body. Digital inventions today have created new avenues to open up cultural data resources, yet mainly as apparatuses for well-annotated and object-based collections. Hence, there is a pressing need for empowering the representation of intangible expressions, particularly embodied knowledge within its cultural context. To address this issue, the authors propose to inspect the potential of machine learning methods to enhance archival knowledge interaction with intangible cultural heritage (ICH) materials.Design/methodology/approachThis research adopts a novel approach by combining movement computing with knowledge-specific modelling to support retrieving through embodied cues, which is applied to a multimodal archive documenting the cultural heritage (CH) of Southern Chinese martial arts.FindingsThrough experimenting with a retrieval engine implemented using the Hong Kong Martial Arts Living Archive (HKMALA) datasets, this work validated the effectiveness of the developed approach in multimodal content retrieval and highlighted the potential for the multimodal's application in facilitating archival exploration and knowledge discoverability.Originality/valueThis work takes a knowledge-specific approach to invent an intelligent encoding approach through a deep-learning workflow. This article underlines that the convergence of algorithmic reckoning and content-centred design holds promise for transforming the paradigm of archival interaction, thereby augmenting knowledge transmission via more accessible CH materials.
通过具身线索解锁中国南方武术的多模式档案
尽管人体是各种文化习俗的真实载体,但人们往往没有充分利用人体来获取人体知识。今天的数字发明创造了开放文化数据资源的新途径,但主要是作为精心注释和基于对象的收藏的工具。因此,迫切需要增强非物质表达的代表性,特别是在其文化背景下体现的知识。为了解决这个问题,作者建议研究机器学习方法的潜力,以增强档案知识与非物质文化遗产(ICH)材料的互动。设计/方法/方法本研究采用一种新颖的方法,将运动计算与知识特定建模相结合,支持通过隐含线索进行检索,并将其应用于记录中国南方武术文化遗产(CH)的多模式档案。研究结果通过使用香港武术动态档案(HKMALA)数据集的检索引擎进行试验,验证了所开发的方法在多模式内容检索中的有效性,并突出了多模式应用在促进档案探索和知识发现方面的潜力。独创性/价值这项工作采用了一种特定于知识的方法,通过深度学习工作流发明了一种智能编码方法。本文强调,算法计算和以内容为中心的设计的融合有望改变档案互动的范式,从而通过更容易获取的CH材料增加知识传播。
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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来源期刊
Journal of Documentation
Journal of Documentation INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
4.20
自引率
14.30%
发文量
72
期刊介绍: The scope of the Journal of Documentation is broadly information sciences, encompassing all of the academic and professional disciplines which deal with recorded information. These include, but are certainly not limited to: ■Information science, librarianship and related disciplines ■Information and knowledge management ■Information and knowledge organisation ■Information seeking and retrieval, and human information behaviour ■Information and digital literacies
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