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On Resampling for Bayesian Filters in Discrete State Spaces

机译:离散状态空间中贝叶斯过滤器重新采样

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Bayesian filtering is one of the most important frameworks for applications such as activity recognition and situation recognition. Current applications involving human behaviour models of large (possibly infinite) discrete state spaces imposes challenges to current inference algorithms. In these complex models approximate solutions are inevitable, in particular Sequential Monte Carlo methods are of great interest. We investigate a key component of the particle filter - the resampling step - for semi-Markov models with discrete states. Particle filters and resampling strategies have only been investigated in detail for continuous models. However, efficient inference for models of human behaviour with discrete states requires methods tailored for discrete state spaces.
机译:贝叶斯过滤是活动识别和情境识别等应用的最重要框架之一。涉及大(可能无限)离散状态空间的人类行为模型的当前应用对当前推理算法施加了挑战。在这些复杂的模型中,近似解决方案是不可避免的,特别是序贯蒙特卡罗方法非常兴趣。我们调查粒子滤波器的关键组件 - 重采样步骤 - 用于离散状态的半马尔可夫模型。仅针对连续模型进行详细研究粒子过滤器和重采样策略。然而,利用离散状态的人类行为模型的高效推论需要为离散状态空间量身定制的方法。

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