Classification of Phornographic Videos Based on the Audio Information

오디오 신호에 기반한 음란 동영상 판별

  • 김봉완 (음성정보기술산업지원센터) ;
  • 최대림 (음성정보기술산업지원센터) ;
  • 이용주 (원광대학교 전기전자 및 정보공학부, 음성정보기술산업지원센터)
  • Published : 2007.09.30

Abstract

As the Internet becomes prevalent in our lives, harmful contents, such as phornographic videos, have been increasing on the Internet, which has become a very serious problem. To prevent such an event, there are many filtering systems mainly based on the keyword-or image-based methods. The main purpose of this paper is to devise a system that classifies pornographic videos based on the audio information. We use the mel-cepstrum modulation energy (MCME) which is a modulation energy calculated on the time trajectory of the mel-frequency cepstral coefficients (MFCC) as well as the MFCC as the feature vector. For the classifier, we use the well-known Gaussian mixture model (GMM). The experimental results showed that the proposed system effectively classified 98.3% of pornographic data and 99.8% of non-pornographic data. We expect the proposed method can be applied to the more accurate classification system which uses both video and audio information.

Keywords