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Cross-Scene Person Trajectory Anomaly Detection Based on Re-Identification

机译:基于重新识别的跨场面人轨迹异常检测

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摘要

In this work, we consider the cross-scene person trajectory anomaly detection problem, which detects the anomalous trajectories across multiple nonoverlapping scenes. This problem is highly significant for public security, but it is still underexplored. Since the trajectory is not continuous across nonoverlapping camera views, we take use of person reidentification (re-ID) to associate the same pedestrian in different scenes while mitigating its inaccuracy by a directional probabilistic graph. To better distinguishing normal samples from anomalies, We formulate a maximized margin graph autoencoder (MMGAE) model, and the reconstruction error of the MMGAE is regarded as an anomaly indicator for the sample. To verify the effectiveness of our approach, we collected and labeled a new dataset. we also explore the impact of the re-ID performance on the anomaly detection problem and the effect of an inaccurately constructed graph on the MMGAE.
机译:在这项工作中,我们考虑跨场面的轨迹异常检测问题,它检测跨多个非原始轨迹的异常轨迹。 这个问题对于公共安全来说非常重要,但它仍然是曝光率的。 由于轨迹不持续跨越相机视图,因此我们使用人员重新登记(RE-ID)来将同一行人与不同的场景相关联,同时通过定向概率图来缓解其不准确性。 为了更好地区分从异常中的正常样本,我们制定了最大化的边缘图AutoEncoder(MMGAE)模型,并且MMGAE的重建误差被认为是样品的异常指示器。 为了验证我们的方法的有效性,我们收集并标记了一个新数据集。 我们还探讨了重新ID性能对异常检测问题的影响,以及在MMGAE上的不准确构造的图形的影响。

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