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Live Video Action Recognition from Unsupervised Action Proposals

机译:从无监督的行动建议的实时视频动作识别

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The problem of action detection in untrimmed videos consists in localizing those parts of a certain video that can contain an action. Typically, state-of-the-art approaches to this problem use a temporal action proposals (TAPs) generator followed by an action classifier module. Moreover, TAPs solutions are learned from a supervised setting, and need the entire video to be processed to produce effective proposals. These properties become a limitation for certain real applications in which a system requires to know the content of the video in an online fashion. To do so, in this work we introduce a live video action detection application which integrates the action classifier step with an unsupervised and online TAPs generator. We evaluate, for the first time, the precision of this novel pipeline for the problem of action detection in untrimmed videos. We offer a thorough experimental evaluation in Activi-tyNet dataset, where our unsupervised model can compete with the state-of-the-art supervised solutions.
机译:Untrimmed视频中的动作检测问题包括本地化某个可包含动作的视频的那些部分。通常,本问题的最先进方法使用时间动作提案(TAPS)发生器,然后是动作分类器模块。此外,可以从监督设置中学到的水龙头解决方案,并需要处理整个视频以产生有效的建议。这些属性成为某些真实应用的限制,其中系统需要以在线方式了解视频的内容。为此,在这项工作中,我们介绍了一个实时视频动作检测应用程序,该检测应用程序将动作分类器步骤与无监督和在线抽头发生器集成。我们首次评估本新型管道的精度,了解未经过时的视频中的动作检测问题。我们在Activi-Tynet数据集中提供了彻底的实验评估,我们无监督的模型可以与最先进的监督解决方案竞争。

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