바로가기메뉴

본문 바로가기 주메뉴 바로가기

logo

검색어: TV content, 검색결과: 2
초록보기
초록

본 연구에서는 방송자료에 대한 지적 접근점을 제공하기 위한 방편으로, 뉴스 및 시사보도 프로그램의 내용 기술을 위한 패싯 분석 기법의 적용을 시도하였다. 랑가나단의 PMEST 기본 패싯에 기반하여, 보도 장르에 적합한 기본 패싯-‘누가’, ‘무엇을’, ‘어떻게’, ‘어디서’, ‘언제’-을 생성하였으며, 보도 장르의 형식적 구조와 내용적 요소를 반영하여 패싯의 구성요소를 추출하였다. 이를 실제 방영한 시사보도 프로그램을 대상으로 적용해 본 결과, 본 연구에서 제안한 패싯이 보도 장르의 맥락적 요소를 잘 표현해주고 있었으며, 패싯의 적용은 특정 방송내용에 대한 식별을 증진시킬 것으로 기대되었다.

Abstract

This study aims to provide intellectual access to TV content using faceted classification. In order to describe the content of news and current affairs programs, a faceted approach was explored. Based on the Ranganathan’s PMEST formula, the basic facets - ‘who’, ‘what’, ‘how’, ‘where’, ‘when’ - and their sub-facets were created, specifically for describing the news genre. Additionally, the formal structure and the contextual features of the news genre were mainly considered for creating sub-facets. These created facets were applied to a news genre program. The result shows that these suggested facets are useful for representing well the contextual components of the news genre. The application of faceted classification is expected to improve the identification of the specific TV content.

초록보기
초록

Abstract

As IT technology develops rapidly and the personal dissemination of smart devices increases, video material is especially used as a medium of information transmission among audiovisual materials. Video as an information service content has become an indispensable element, and it has been used in various ways such as unidirectional delivery through TV, interactive service through the Internet, and audiovisual library borrowing. Especially, in the Internet environment, the information provider tries to reduce the effort and cost for the processing of the provided information in view of the video service through the smart device. In addition, users want to utilize only the desired parts because of the burden on excessive network usage, time and space constraints. Therefore, it is necessary to enhance the usability of the video by automatically classifying, summarizing, and indexing similar parts of the contents. In this paper, we propose a method of automatically segmenting the shots that make up videos by analyzing the contents and characteristics of language education videos and indexing the detailed contents information of the linguistic videos by combining visual features. The accuracy of the semantic based shot segmentation is high, and it can be effectively applied to the summary service of language education videos.

정보관리학회지