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Hierarchical spatiotemporal modeling for dynamic video trajectory analysis

机译:动态视频轨迹分析的时空分层建模

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摘要

Normalcy decision in video security involves highly uncertain phenomena due to its inherited insufficient knowledge, intrinsic ambiguity in human cognition, measurement error, etc. This paper presents a hierarchical spatiotemporal trajectory modeling for dynamic trajectory analysis using sparse trajectory data. The trajectory data is assumed to be given by people detection and tracking methods, which are also challenging issues due to occlusion, noise, illumination changes, etc. The proposed method partitions the trajectory feature space into the attributes of trajectory position, direction, and speed. Inherent uncertainty of video trajectory is tackled by employing the uncertainty propagation model of a trajectory segment and Markov random field in analyzing the uncertainty attributes of object movement direction and speed. The proposed method can be used in online learning for incremental adaptation as well as offline learning for optimality guarantee. The method was evaluated using both synthetic trajectories and video streams of multiple people movements acquired from multiple video cameras developed by GE Global Research Center and KAL beta sites. Extensive experiments were performed using video sequences in real world and synthesized trajectories, which achieved very encouraging results.
机译:视频安全性的正常决策由于其继承的知识不足,人类认知的内在模糊性,测量误差等而涉及高度不确定的现象。本文提出了一种使用稀疏轨迹数据进行动态轨迹分析的分层时空轨迹模型。假设轨迹数据是通过人员检测和跟踪方法给出的,由于遮挡,噪声,照度变化等原因,这也是具有挑战性的问题。建议的方法将轨迹特征空间划分为轨迹位置,方向和速度的属性。利用轨迹段的不确定性传播模型和马尔可夫随机场,分析了物体运动方向和速度的不确定性属性,解决了视频轨迹的固有不确定性。所提出的方法既可以用于在线学习中进行增量自适应,也可以用于离线学习中进行最优性保证。该方法使用合成轨迹和从GE全球研究中心和KAL beta网站开发的多个摄像机获取的多人运动视频流进行了评估。使用现实世界中的视频序列和合成轨迹进行了广泛的实验,取得了令人鼓舞的结果。

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