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Improving a Switched Vector Field Model for Pedestrian Motion Analysis

机译:改进行人运动分析的交换矢量场模型

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Modeling the trajectories of pedestrians is a key task in video surveillance. However, finding a suitable model to describe the trajectories is challenging, mainly because several of the models tend to have a large number of parameters to be estimated. This paper addresses this issue and provides insights on how to tackle this problem. We model the trajectories using a mixture of vector fields with probabilistic switching mechanism that allows to efficiently change the trajectory motion. Depending on the probabilistic formulation, the motions fields can have a dense or sparse representation, which we believe influences the performance of the model. Moreover, the model has a large set of parameters that need to be estimated using the initialization-dependent EM-algorithm. To overcome the previous issues, an extensive study of the parameters estimation is conducted, namely: (ⅰ) initialization, and (ⅱ) priors distribution that controls the sparsity of the solution. The various models are evaluated in the trajectory prediction task, using a newly proposed method. Experimental results in both synthetic and real examples provide new insights and valuable information how the parameters play an important in the proposed framework.
机译:对行人的轨迹进行建模是视频监控的关键任务。然而,找到合适的模型来描述轨迹是具有挑战性的,主要是因为其中一些模型倾向于具有大量要估计的参数。本文解决了这个问题,并提供了有关如何解决此问题的见解。我们使用矢量场与概率切换机制的混合来对轨迹进行建模,该概率切换机制可以有效地改变轨迹运动。根据概率公式,运动场可以具有密集或稀疏的表示形式,我们认为这会影响模型的性能。此外,该模型具有大量参数,需要使用依赖于初始化的EM算法进行估计。为了克服先前的问题,对参数估计进行了广泛的研究,即:(ⅰ)初始化,和(ⅱ)控制解决方案稀疏性的先验分布。使用新提出的方法,可以在轨迹预测任务中评估各种模型。综合实例和实际实例中的实验结果均提供了新的见解和有价值的信息,这些参数如何在建议的框架中发挥重要作用。

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