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Semantic Approach to Opening Museum Collections of Everyday Life History for Services in Internet of Things Environments

Semantic Approach to Opening Museum Collections of Everyday Life History for Services in Internet of Things Environments
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Author(s): Oksana B. Petrina (Petrozavodsk State University, Russia), Dmitry G. Korzun (Petrozavodsk State University, Russia), Valentina V. Volokhova (Petrozavodsk State University, Russia), Svetlana E. Yalovitsyna (Institute of Linguistics, Literature and History, KarRC RAS, Russia)and Aleksey G. Varfolomeyev (Petrozavodsk State University, Russia)
Copyright: 2020
Pages: 15
Source title: Securing the Internet of Things: Concepts, Methodologies, Tools, and Applications
Source Author(s)/Editor(s): Information Resources Management Association (USA)
DOI: 10.4018/978-1-5225-9866-4.ch068

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Abstract

Technologies of the Internet of Things (IoT) and of smart spaces support creating smart museums based on digitized infrastructures and information systems already deployed in modern museums. Cultural heritage knowledge in such a museum is used by interested visitors as well as by personnel. This work continues the authors' research on the smart museum concept and its case study of everyday life history in the History Museum of Petrozavodsk State University (PetrSU). The authors develop an ontological model for the needs of studying the everyday life history. The ontology supports integrating descriptions of collected exhibits into a semantic network, where the links reflect meaningful relations between exhibits and other historical objects. They apply the wiki technology within the smart spaces-based architecture of a smart museum. The wiki implements an ontology-enabled system that experts use to extract and represent knowledge hidden in the museum collection. The authors discuss possible semantic algorithms for data mining in the museum semantic network.

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