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Integrating Graph Partitioning and Matching for Trajectory Analysis in Video Surveillance

机译:在视频监控中集成图分区和匹配进行轨迹分析

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摘要

In order to track moving objects in long range against occlusion, interruption, and background clutter, this paper proposes a unified approach for global trajectory analysis. Instead of the traditional frame-by-frame tracking, our method recovers target trajectories based on a short sequence of video frames, e.g., 15 frames. We initially calculate a foreground map at each frame obtained from a state-of-the-art background model. An attribute graph is then extracted from the foreground map, where the graph vertices are image primitives represented by the composite features. With this graph representation, we pose trajectory analysis as a joint task of spatial graph partitioning and temporal graph matching. The task can be formulated by maximizing a posteriori under the Bayesian framework, in which we integrate the spatio-temporal contexts and the appearance models. The probabilistic inference is achieved by a data-driven Markov chain Monte Carlo algorithm. Given a period of observed frames, the algorithm simulates an ergodic and aperiodic Markov chain, and it visits a sequence of solution states in the joint space of spatial graph partitioning and temporal graph matching. In the experiments, our method is tested on several challenging videos from the public datasets of visual surveillance, and it outperforms the state-of-the-art methods.
机译:为了跟踪运动对象的远距离遮挡,中断和背景杂波,本文提出了一种统一的全局轨迹分析方法。代替传统的逐帧跟踪,我们的方法基于短序列的视频帧(例如15帧)来恢复目标轨迹。我们最初从最新的背景模型获得的每一帧上计算前景图。然后从前景地图中提取属性图,其中图的顶点是由复合特征表示的图像图元。通过这种图形表示,我们将轨迹分析作为空间图形分区和时间图形匹配的共同任务。可以通过在贝叶斯框架下最大化后验来制定任务,在该框架中我们整合了时空上下文和外观模型。概率推断是通过数据驱动的马尔可夫链蒙特卡洛算法实现的。给定一定周期的观察帧,该算法模拟遍历和非周期性的马尔可夫链,并在空间图划分和时间图匹配的联合空间中访问一系列解状态。在实验中,我们的方法在来自公开的视觉监控数据集中的几个具有挑战性的视频上进行了测试,其性能优于最新方法。

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