Credit-title detection of video contents based on estimation of superimposed region using character density distribution

R. Mase, R. Oami, T. Nomura
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引用次数: 0

Abstract

We propose a credit-title detection method of video contents based on estimation of superimposed region using character density distribution. Copyright information of video contents is manually extracted for the secondary use of those contents, and its cost is highly expensive. Therefore, automatic detection of credit titles that contain copyright information is highly demanded. However, accuracy of conventional methods is usually insufficient for this purpose. Our method first estimates credit-title-superimposed region based on character density distribution calculated in advance by using many video contents. Then, credit titles are detected in the estimated region. The experiment results show that proposed method improves both recall and precision rates compared to a conventional method. Furthermore, the processing time of the proposed method is less than half that of the conventional method for all contents.
基于字符密度分布估计叠加区域的视频内容字幕检测
提出了一种基于字符密度分布估计叠加区域的视频字幕检测方法。视频内容的版权信息是人工提取的,用于视频内容的二次利用,其成本非常昂贵。因此,对包含版权信息的片名进行自动检测是非常必要的。然而,传统方法的准确性通常不足以达到这一目的。该方法首先利用大量视频内容,根据事先计算的字符密度分布估计字幕叠加区域。然后,在估计的区域中检测信用标题。实验结果表明,与传统方法相比,该方法提高了查全率和查准率。此外,该方法对所有内容的处理时间不到传统方法的一半。
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