利用Vlog流识别YouTube上的色情视频

M. Islam, M. Ahmed, K. Z. Zamli
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引用次数: 2

摘要

今天,YouTube是最常用的从个人到组织分享视频的平台。除了分享视频,YouTube还创建了一个社交网络平台,允许分享关于视频的感受、观点和观点,称为vlog。它还允许上传所有年龄段的视频(儿童、年轻人和老年人)。YouTube有自己的政策来定义YouTube上限制年龄的内容。但是很多上传的视频虽然含有色情内容,却没有标明年龄限制。YouTube有一个团队,只在收到用户的报告后审查视频内容。现有的识别色情视频的方法都是基于视频的视觉特征或视听特征。然而,目前还没有一种自动的方法可以让作者根据视频博主的情绪来识别他们。因此,在内容过滤、非法内容检测等应用中,自动检测这类视频内容是一个很大的挑战。本文提出了一种基于视频日志流的YouTube色情内容自动识别方法。在年龄限制的视频日志流和不受年龄限制的视频日志流上进行了实验,验证了所提出的方法。实验结果表明了该方法的有效性,准确率接近80%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying the Pornographic Video on YouTube Using Vlog Stream
Today, YouTube is the most used platform for sharing videos from individual to organizations. Along with the sharing videos, YouTube creates a social networking platform by allowing sharing of feelings, views, and opinions about a video called vlog. It also allows uploading of videos of all ages (child, young and old people). YouTube has its policy for defining age-restricted content on YouTube. But a lot of uploaded videos are not marked as age restricted though they actually contain pornographic contents. YouTube has a team for reviewing the video content upon receiving a report from the user only. All the existing methods identify the pornographic video based on the visual or audio-visual features of video. However, there is no automatic method exist the author aware of identifying them based on vlogger sentiment. Thus, the challenge of automatically detecting this kind of video content is significant in applications like content filtering, detection of illegal content, etc. In this paper, we present an automatic method for identifying the pornographic content on YouTube based on the vlog stream. The experiment has been executed on both the age-restricted vlog stream and non-restricted vlog stream to validate the proposed method. The experimental result shows the effectiveness of the proposed methodology with nearly 80% accuracy.
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