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Video trajectory analysis using unsupervised clustering and multi-criteria ranking

机译:使用无监督聚类和多标准排名的视频轨迹分析

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摘要

Surveillance camera usage has increased significantly for visual surveillance. Manual analysis of large video data recorded by cameras may not be feasible on a larger scale. In various applications, deep learning-guided supervised systems are used to track and identify unusual patterns. However, such systems depend on learning which may not be possible. Unsupervised methods relay on suitable features and demand cluster analysis by experts. In this paper, we propose an unsupervised trajectory clustering method referred to as t-Cluster. Our proposed method prepares indexes of object trajectories by fusing high-level interpretable features such as origin, destination, path, and deviation. Next, the clusters are fused using multi-criteria decision making and trajectories are ranked accordingly. The method is able to place abnormal patterns on the top of the list. We have evaluated our algorithm and compared it against competent baseline trajectory clustering methods applied to videos taken from publicly available benchmark datasets. We have obtained higher clustering accuracies on public datasets with significantly lesser computation overhead.
机译:视觉监控的监控摄像机使用量显着增加。手动分析摄像机记录的大型视频数据可能无法在较大尺度上可行。在各种应用中,深度学习引导的监督系统用于跟踪和识别异常模式。然而,这种系统依赖于学习,这可能是不可能的。未经监督的方法通过专家对合适的特征和需求集群分析继电。在本文中,我们提出了一种无监督的轨迹聚类方法,称为T簇。我们所提出的方法通过融合起源,目的地,路径和偏差等高级可解释功能来准备对象轨迹的指标。接下来,使用多标准决策制作融合群集,并且相应地排列轨迹。该方法能够在列表顶部放置异常模式。我们已经评估了我们的算法,并将其与来自来自公开可用的基准数据集采用的视频进行了比较。我们在公共数据集上获得了更高的聚类精度,具有显着较小的计算开销。

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