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Video Sensor-Based Complex Scene Analysis with Granger Causality

机译:具有格兰杰因果关系的基于视频传感器的复杂场景分析

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In this report, we propose a novel framework to explore the activity interactions and temporal dependencies between activities in complex video surveillance scenes. Under our framework, a low-level codebook is generated by an adaptive quantization with respect to the activeness criterion. The Hierarchical Dirichlet Processes (HDP) model is then applied to automatically cluster low-level features into atomic activities. Afterwards, the dynamic behaviors of the activities are represented as a multivariate point-process. The pair-wise relationships between activities are explicitly captured by the non-parametric Granger causality analysis, from which the activity interactions and temporal dependencies are discovered. Then, each video clip is labeled by one of the activity interactions. The results of the real-world traffic datasets show that the proposed method can achieve a high quality classification performance. Compared with traditional K-means clustering, a maximum improvement of 19.19% is achieved by using the proposed causal grouping method.
机译:在此报告中,我们提出了一个新颖的框架来探索复杂视频监视场景中活动之间的活动交互和时间依赖性。在我们的框架下,通过针对活动性准则的自适应量化来生成低级代码本。然后,应用层次Dirichlet流程(HDP)模型将低级特征自动聚类为原子活动。然后,将活动的动态行为表示为多元点过程。活动之间的成对关系通过非参数格兰杰因果关系分析明确捕获,从中发现了活动交互作用和时间依赖性。然后,每个视频剪辑都通过活动交互之一进行标记。真实交通数据集的结果表明,该方法可以实现高质量的分类性能。与传统的K-means聚类相比,使用提出的因果分组方法可最大提高19.19%。

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