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Detecting Rare Actions and Events from Surveillance Big Data with Bag of Dynamic Trajectories

机译:使用动态轨迹袋从监视大数据中检测稀有动作和事件

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Surveillance video is increasingly becoming the "biggest big data". This presents an unprecedented challenge for analyzing and mining the meaningful information (e.g., Rare actions or events) in such a huge amount of videos. Recent studies have shown that feature-trajectories-based methods are effective to encode motion information in video, consequently demonstrating superior performance in action and event detection. However, in existing methods, distance between two trajectories is often measured by linear models, which may be not robust enough when the lengths of trajectories are variable. Moreover, due to the rare distribution of target actions or events, the traditional classifier often tends to identify all samples as negative, consequently producing heavy performance bias. To address both two issues, this paper proposes a trajectory descriptor, BoDT (Bag of Dynamic Trajectories), and a multi-channel uneven SVM. By utilizing the DTW (dynamic time warping) algorithm to measure the similarity between two trajectories, BoDT is robust for variable-length trajectory representation. Meanwhie, as an extension of SVM with uneven margins, the proposed multi-channel uneven SVM can successfully identify rare events by adjusting a margin parameter to make the classification boundary properly moved away from the positive training examples. Extensive experiments on several benchmark datasets including KTH, YouTube, Olympic, MIT, QMUL and TRECVid demonstrate that our approach is feasible and effective.
机译:监控视频正日益成为“最大的大数据”。在如此大量的视频中,分析和挖掘有意义的信息(例如,稀有动作或事件)提出了前所未有的挑战。最近的研究表明,基于特征轨迹的方法可有效地对视频中的运动信息进行编码,因此证明了在动作和事件检测中的出色性能。然而,在现有方法中,经常通过线性模型来测量两个轨迹之间的距离,当轨迹的长度可变时,这可能不够鲁棒。此外,由于目标动作或事件的稀有分布,传统的分类器通常倾向于将所有样本识别为负值,从而产生严重的性能偏差。为了解决这两个问题,本文提出了轨迹描述符BoDT(动态轨迹的包)和多通道不均匀SVM。通过利用DTW(动态时间扭曲)算法测量两条轨迹之间的相似度,BoDT对于可变长度轨迹表示具有鲁棒性。同时,作为具有不均匀边界的支持向量机的扩展,提出的多通道不均匀支持向量机可以通过调整边界参数使分类边界适当地偏离正训练实例,从而成功地识别稀有事件。在包括KTH,YouTube,Olympic,MIT,QMUL和TRECVid在内的几个基准数据集上进行的大量实验表明,我们的方法是可行和有效的。

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