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Tracking Multiple Persons Based on a Variational Bayesian Model

机译:基于变分贝叶斯模型跟踪多人

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Object tracking is an ubiquitous problem in computer vision with many applications in human-machine and human-robot interaction, augmented reality, driving assistance, surveillance, etc. Although thoroughly investigated, tracking multiple persons remains a challenging and an open problem. In this paper, an online variational Bayesian model for multiple-person tracking is proposed. This yields a variational expectation-maximization (VEM) algorithm. The computational efficiency of the proposed method is due to closed-form expressions for both the posterior distributions of the latent variables and for the estimation of the model parameters. A stochastic process that handles person birth and person death enables the tracker to handle a varying number of persons over long periods of time. The proposed method is benchmarked using the MOT 2016 dataset.
机译:对象跟踪是计算机视觉中的普遍存在的问题,在人机和人机互动,增强现实,驾驶援助,监控等中的许多应用。虽然彻底调查,但跟踪多人仍然是一个具有挑战性和一个公开问题。本文提出了一种用于多人跟踪的在线变分贝叶斯模型。这产生了变分期预期 - 最大化(VEM)算法。所提出的方法的计算效率是由于潜在变量的后部分布和用于估计模型参数的闭合形式的表达式。处理患者诞生和人死亡的随机过程使跟踪器能够长时间处理不同数量的人。所提出的方法使用MOT 2016数据集进行基准测试。

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