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M2SIR: A multi modal sequential importance resampling algorithm for particle filters

机译:M2SIR:一种用于粒子滤波器的多模式顺序重要性重采样算法

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We present a multi modal sequential importance resampling particle filter algorithm for object tracking. We consider a hidden state sequence linked to several observation sequences given by different sensors. In a particle filter based framework, each sensor provides a likelihood (weight) associated to each particle and simple rules are applied to merge the different weights such as addition or product. We propose an original algorithm based on likelihood ratios to merge the observations within the sampling step. The algorithm is compared with classic fusion operations on toy examples. Moreover, we show that the method gives satisfactory results on a real vehicle tracking application.
机译:我们提出了一种用于目标跟踪的多模式顺序重要性重采样粒子滤波算法。我们考虑一个隐藏状态序列,该序列链接到由不同传感器给出的几个观察序列。在基于粒子过滤器的框架中,每个传感器都提供与每个粒子关联的可能性(权重),并且应用简单规则合并不同的权重(例如加法或乘积)。我们提出了一种基于似然比的原始算法,以在采样步骤中合并观测值。该算法与玩具实例中的经典融合操作进行了比较。此外,我们表明该方法在真实的车辆跟踪应用中给出了令人满意的结果。

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