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Improving Video Activity Recognition using Object Recognition and Text Mining

机译:使用对象识别和文本挖掘提高视频活动识别

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Recognizing activities in real-world videos is a challenging AI problem. We present a novel combination of standard activity classification, object recognition, and text mining to learn effective activity recognizers without ever explicitly labeling training videos. We cluster verbs used to describe videos to automatically discover classes of activities and produce a labeled training set. This labeled data is then used to train an activity classifier based on spatio-temporal features. Next, text mining is employed to learn the correlations between these verbs and related objects. This knowledge is then used together with the outputs of an off-the-shelf object recognizer and the trained activity classifier to produce an improved activity recognizer. Experiments on a corpus of YouTube videos demonstrate the effectiveness of the overall approach.
机译:识别现实世界视频中的活动是一个挑战的AI问题。我们提出了一种新的标准活动分类,对象识别和文本挖掘的组合,以学习有效的活动识别人员,而无需明确标记培训视频。我们群集动词用于描述视频,以自动发现活动类并生成标签培训集。然后使用该标记数据根据时空特征训练活动分类器。接下来,采用文本挖掘来学习这些动词和相关对象之间的相关性。然后将此知识与现成的特性对象识别器和培训的活动分类器的输出一起使用,以产生改进的活动识别器。关于YouTube视频语料库的实验证明了整体方法的有效性。

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