• Title/Summary/Keyword: description meta tag

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A Study on the Use of Description and keywords Meta Tags for the Content of WWW Resources (웹 정보자원의 내용기술을 위한 Keywords와 Description 메타테그 활용도에 관한 연구)

  • 최재황;조현양
    • Journal of Korean Library and Information Science Society
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    • v.32 no.2
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    • pp.307-322
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    • 2001
  • The purpose of this study is to investigate how and which meta tags are used, which meta tags are used frequently, and what relationships there are between retrieval of WWW documents and meta tags. For the study, 1,000 WWW documents were selected and examined from OCLC NetFirst. The total of 92 meta tags was discovered and "description" and "keywords"meta tags were analyzed intensively. In addition, analysis of WWW documents showed that there are no significant relationships in meta tag usages between documents retrieved at the beginning and documents retrieved at the end. Comparative study between general internet search engines and commercial DBs such as NetFirst is suggested as a further study.

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Ontology and Sequential Rule Based Streaming Media Event Recognition (온톨로지 및 순서 규칙 기반 대용량 스트리밍 미디어 이벤트 인지)

  • Soh, Chi-Seung;Park, Hyun-Kyu;Park, Young-Tack
    • Journal of KIISE
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    • v.43 no.4
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    • pp.470-479
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    • 2016
  • As the number of various types of media data such as UCC (User Created Contents) increases, research is actively being carried out in many different fields so as to provide meaningful media services. Amidst these studies, a semantic web-based media classification approach has been proposed; however, it encounters some limitations in video classification because of its underlying ontology derived from meta-information such as video tag and title. In this paper, we define recognized objects in a video and activity that is composed of video objects in a shot, and introduce a reasoning approach based on description logic. We define sequential rules for a sequence of shots in a video and describe how to classify it. For processing the large amount of increasing media data, we utilize Spark streaming, and a distributed in-memory big data processing framework, and describe how to classify media data in parallel. To evaluate the efficiency of the proposed approach, we conducted an experiment using a large amount of media ontology extracted from Youtube videos.