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학술대회 Implementation of High Performance Objectionable Video Classification System
Cited 30 time in scopus Download 0 time Share share facebook twitter linkedin kakaostory
저자
이호균, 이승민, 남택용
발행일
200602
출처
International Conference on Advanced Communication Technology (ICACT) 2006, pp.959-962
협약과제
05MK1600, 내용기반 유해정보 방지기술 개발, 장종수
초록
Sex video files being spread via web site and P2P networks have caused social problems. It is necessary to prevent more people, especially teenagers, from getting a distorted view of sex through the influence of the obscene content. We propose and implement the obscene video classification system using two visual features to determine a video's lewdness with very excellent performance. In our approach, the two features are first built for each video and a final decision function is made to classify an obscene video. One of the visual features is a single frame based decision variable and the other is a group frame based decision variable. Then the final decision function is developed to optimize high classification performance using the variables by the discriminant analysis. Experimentally we show that the proposed method performs excellently in classifying videos into porno and the other, thus enabling automatic filtering of obscene videos.
KSP 제안 키워드
Classification Performance, Classification system, Decision variable, High performance, Objectionable Video Classification, P2P Network, Single frame, Social problems, Visual features, Web sites, decision function