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Bayesian Inference of Recursive Sequences of Group Activities from Tracks

机译:从轨道递归序列的贝叶斯推断

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We present a probabilistic generative model for inferring a description of coordinated, recursively structured group activities at multiple levels of temporal granularity based on observations of individuals' trajectories. The model accommodates: (1) hierarchically structured groups, (2) activities that are temporally and compositionally recursive, (3) component roles assigning different subactivity dynamics to subgroups of participants, and (4) a nonparametric Gaussian Process model of trajectories. We present an MCMC sampling framework for performing joint inference over recursive activity descriptions and assignment of trajectories to groups, integrating out continuous parameters. We demonstrate the model's expressive power in several simulated and complex real-world scenarios from the VIRAT and UCLA Aerial Event video data sets.
机译:我们介绍了一种概率的生成模型,用于在多个级别的时间粒度基于个体轨迹的观察中推断协调的递归结构化组活动的描述。该模型可容纳:(1)分层结构组,(2)在时间和合成的递归的活动,(3)分配与参与者子组的不同子项作动态的组成角色,(4)轨迹的非参数高斯过程模型。我们介绍了MCMC采样框架,用于对递归活动说明和分配轨迹进行联合推理,集成连续参数。我们展示了来自Virat和UCLA空中事件视频数据集的几个模拟和复杂的真实情景中的模型的表现力。

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