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Uncertainty modelling and computational aspects of data association

机译:数据协会的不确定性建模与计算方面

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摘要

A novel solution to the smoothing problem for multi-object dynamical systems is proposed and evaluated. The systems of interest contain an unknown and varying number of dynamical objects that are partially observed under noisy and corrupted observations. In order to account for the lack of information about the different aspects of this type of complex system, an alternative representation of uncertainty based on possibility theory is considered. It is shown how analogues of usual concepts such as Markov chains and hidden Markov models (HMMs) can be introduced in this context. In particular, the considered statistical model for multiple dynamical objects can be formulated as a hierarchical model consisting of conditionally independent HMMs. This structure is leveraged to propose an efficient method in the context of Markov chain Monte Carlo (MCMC) by relying on an approximate solution to the corresponding filtering problem, in a similar fashion to particle MCMC. This approach is shown to outperform existing algorithms in a range of scenarios.
机译:提出并评估了对多目标动态系统的平滑问题的新方法。感兴趣的系统包含在嘈杂和损坏的观察下部分观察到的未知和变化的动态物体。为了考虑缺乏关于这种复杂系统的不同方面的信息,考虑了基于可能性理论的不确定性的替代表示。它可以在此上下文中介绍如何在Markov链和隐藏的Markov模型(HMMS)等常见概念的模拟方式。特别地,考虑多个动态对象的统计模型可以被配制为由条件独立的HMM组成的分层模型。利用这种结构在马尔可夫链蒙特卡罗(MCMC)的背景下提出了一种有效的方法,通过依赖于对应的滤波问题的近似解决方案,以类似的方式到粒子MCMC。该方法显示在一系列场景中优于现有的现有算法。

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