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A Novel Machine Learning Approach to Prevent Illegal Distribution of Screen Captured Videos

机译:防止屏幕截图视频非法分发的新型机器学习方法

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Capturing of videos from the television (TV) screens or from the theater screens by using the mobile cameras and its illegal distribution through video-sharing websites like YouTube, Dailymotion, Metacafe, etc. is a well-known challenge faced by the film industry. The video-sharing websites like YouTube does not encourage the illegal distribution of videos (without proper consent from the content owner). Currently, the YouTube has a facility to remove an illegally distributed video content from its video repository based on the request from the content owner. In general, the removal of an illegally distributed video may take a few days, hence during this period, the video may be downloaded by many of the people. The downloaded videos may be again distributed over the internet through different modes. This paper proposed a new technique which will classify a given video into normal video or screen captured video and it can be incorporated with video-sharing websites to prevent the illegal distribution of screen captured videos. The proposed scheme uses a support vector machine model which is trained using no-reference image quality measures. As far as our knowledge is concerned, there is no related work in this area.
机译:使用移动摄像头捕捉来自电视(TV)屏幕或剧院屏幕的视频,以及通过YouTube,Dailymotion,Metacafe等视频共享网站非法分发视频是电影业面临的众所周知的挑战。 YouTube之类的视频共享网站不鼓励非法分发视频(未经内容所有者的适当同意)。目前,YouTube可以根据内容所有者的请求从其视频存储库中删除非法分发的视频内容。通常,删除非法分发的视频可能需要几天的时间,因此在此期间,许多人可能会下载该视频。所下载的视频可以通过不同的方式再次在互联网上分发。本文提出了一种新技术,该技术将给定视频分为正常视频或屏幕捕获视频,并且可以与视频共享网站结合使用,以防止屏幕捕获视频的非法分发。所提出的方案使用支持向量机模型,该模型使用无参考图像质量度量进行训练。就我们所知,这方面没有相关工作。

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