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Motion Pattern Study and Analysis from Video Monitoring Trajectory

机译:视频监控轨迹的运动模式研究与分析

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This paper introduces an unsupervised method for motion pattern learning and abnormality detection from video surveillance. In the preprocessing steps, trajectories are segmented based on their locations, and the sub-trajectories are represented as codebooks. Under our framework, Hidden Markov Models (HMMs) are used to characterize the motion pattern feature of the trajectory groups. The state of trajectory is represented by a HMM and has a probability distribution over the possible output sub-trajectories. Bayesian Information Criterion (BIC) is introduced to measure the similarity between groups. Based on the pairwise similarity scores, an affinity matrix is constructed which indicates the distance between different trajectory groups. An Adaptable Dynamic Hierarchical Clustering (ADHC) tree is proposed to gradually merge the most similar groups and form the trajectory motion patterns, which implements a simpler and more tractable dynamical clustering procedure in updating the clustering results with lower time complexity and avoids the traditional overfitting problem. By using the HMM models generated for the obtained trajectory motion patterns, we may recognize motion patterns and detect anomalies by computing the likelihood of the given trajectory, where a maximum likelihood for HMM indicates a pattern, and a small one below a threshold suggests an anomaly. Experiments are performed on EIFPD trajectory datasets from a structureless scene, where pedestrians choose their walking paths randomly. The experimental results show that our method can accurately learn motion patterns and detect anomalies with better performance.
机译:本文介绍了一种无监督的运动模式学习和视频监控异常检测方法。在预处理步骤中,根据轨迹的位置对轨迹进行分段,并将子轨迹表示为代码本。在我们的框架下,隐马尔可夫模型(HMM)用于表征轨迹组的运动模式特征。轨迹的状态由HMM表示,并且在可能的输出子轨迹上具有概率分布。引入贝叶斯信息准则(BIC)来衡量组之间的相似性。基于成对的相似性分数,构造了亲和度矩阵,其指示了不同轨迹组之间的距离。提出了一种自适应动态层次聚类树(ADHC)来逐渐合并最相似的组并形成轨迹运动模式,从而以更简单,更易处理的动态聚类过程更新聚类结果,时间复杂度较低,避免了传统的过度拟合问题。通过使用为获得的轨迹运动模式生成的HMM模型,我们可以识别运动模式并通过计算给定轨迹的可能性来检测异常,其中HMM的最大可能性表示一种模式,而低于阈值的小可能性表明存在异常。对来自无结构场景的EIFPD轨迹数据集进行了实验,其中行人随机选择步行路径。实验结果表明,该方法能够准确学习运动模式并检测出异常,具有较好的性能。

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