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首页> 外文期刊>IEEE transactions on multimedia >Tracking Large-Scale Video Remix in Real-World Events
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Tracking Large-Scale Video Remix in Real-World Events

机译:在真实事件中跟踪大型视频混音

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摘要

Content sharing networks, such as YouTube, contain traces of both explicit online interactions (such as likes, comments, or subscriptions), as well as latent interactions (such as quoting, or remixing, parts of a video). We propose visual memes, or frequently re-posted short video segments, for detecting and monitoring such latent video interactions at scale. Visual memes are extracted by scalable detection algorithms that we develop, with high accuracy. We further augment visual memes with text, via a statistical model of latent topics. We model content interactions on YouTube with visual memes, defining several measures of influence and building predictive models for meme popularity. Experiments are carried out with over 2 million video shots from more than 40,000 videos on two prominent news events in 2009: the election in Iran and the swine flu epidemic. In these two events, a high percentage of videos contain remixed content, and it is apparent that traditional news media and citizen journalists have different roles in disseminating remixed content. We perform two quantitative evaluations for annotating visual memes and predicting their popularity. The proposed joint statistical model of visual memes and words outperforms an alternative concurrence model, with an average error of 2% for predicting meme volume and 17% for predicting meme lifespan.
机译:内容共享网络(例如YouTube)既包含明确的在线互动(例如喜欢,评论或订阅),也包含潜在的互动(例如引用或重新混合视频的一部分)的痕迹。我们提出视觉模因或经常重新发布的短视频片段,以大规模检测和监视这种潜在的视频交互。视觉模因是由我们开发的可扩展检测算法提取的,具有很高的准确性。通过潜在主题的统计模型,我们进一步通过文字增强了视觉模因。我们使用视觉模因对YouTube上的内容互动进行建模,定义几种影响力的度量标准,并为模因流行度建立预测模型。在2009年的两个重大新闻事件中,使用了40,000多个视频中的200万个视频镜头进行了实验,这些事件是伊朗大选和猪流感的流行。在这两个事件中,高比例的视频包含重新混合的内容,很明显,传统新闻媒体和公民新闻记者在传播重新混合的内容方面具有不同的作用。我们执行了两个定量评估,用于注释视觉模因并预测其受欢迎程度。拟议的视觉模因和单词联合统计模型优于替代的并发模型,预测模因量的平均误差为2%,预测模因寿命的平均误差为17%。

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