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Hierarchical Graphical Models for Simultaneous Tracking and Recognition in Wide-Area Scenes

机译:广域场景中同时跟踪和识别的分层图形模型

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We present a unified framework to track multiple people, as well localize, and label their activities, in complex long-duration video sequences. To do this, we focus on two aspects: 1) the influence of tracks on the activities performed by the corresponding actors and 2) the structural relationships across activities. We propose a two-level hierarchical graphical model, which learns the relationship between tracks, relationship between tracks, and their corresponding activity segments, as well as the spatiotemporal relationships across activity segments. Such contextual relationships between tracks and activity segments are exploited at both the levels in the hierarchy for increased robustness. An L1-regularized structure learning approach is proposed for this purpose. While it is well known that availability of the labels and locations of activities can help in determining tracks more accurately and vice-versa, most current approaches have dealt with these problems separately. Inspired by research in the area of biological vision, we propose a bidirectional approach that integrates both bottom-up and top-down processing, i.e., bottom-up recognition of activities using computed tracks and top-down computation of tracks using the obtained recognition. We demonstrate our results on the recent and publicly available UCLA and VIRAT data sets consisting of realistic indoor and outdoor surveillance sequences.
机译:我们提供了一个统一的框架,用于在复杂的长时间视频序列中跟踪多个人,以及对其进行定位和标记。为此,我们着眼于两个方面:1)轨道对相应参与者执行的活动的影响; 2)跨活动的结构关系。我们提出了一个两层的分层图形模型,该模型学习轨迹之间的关系,轨迹之间的关系及其对应的活动段,以及跨活动段的时空关系。跟踪和活动段之间的此类上下文关系在层次结构的两个级别上都得到了利用,以提高鲁棒性。为此目的,提出了一种L1正规化的结构学习方法。众所周知,标签的可用性和活动的位置可以帮助更准确地确定航迹,反之亦然,但是大多数当前方法已分别解决了这些问题。受生物视觉领域研究的启发,我们提出了一种双向方法,该方法整合了自下而上和自上而下的处理功能,即使用计算出的轨迹对活动进行自下而上的识别,并使用获得的识别率进行自上而下的计算。我们在最近的和公开可用的UCLA和VIRAT数据集上展示了我们的结果,这些数据集由现实的室内和室外监控序列组成。

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