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A Multi-Sensor, Gibbs Sampled, Implementation of the Multi-Bernoulli Poisson Filter

机译:多传感器,吉布斯采样,实现多Bernoulli泊松滤波器

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This paper introduces and addresses the implementation of the Multi-Bernoulli Poisson (MBP) filter in multi-target tracking. A performance evaluation in a real scenario, in which a 3D lidar, automotive radar and a video camera are used for tracking people will be provided. For implementation purposes, a Gaussian Mixture (GM) approximation of the MBP filter is used. Comparisons with state of the art GM-δ-GLMB and GM-δ-GMBP filters show similar accuracy, despite the need for less parameters, and therefore less computational cost, within the GM-MBP filter. Further performance improvements of the GM-MBP filter are shown, based on birth intensity and survival distributions, which take into account the common field of view of the sensors and the variation of time steps between asynchronous measurements.
机译:本文介绍了多目标跟踪中多Bernoulli泊松(MBP)滤波器的实现。将提供在实际情况下的性能评估,其中将提供3D LIDAR,汽车雷达和摄像机跟踪人员。为了实现目的,使用MBP滤波器的高斯混合物(GM)近似。尽管需要更少参数,但在GM-MBP滤波器内,但仍然需要比较GM-Δ-GLMB和GM-Δ-GMBP滤波器的比较GM-Δ-GLMB和GM-Δ-GMBP滤波器表现出类似的准确性,并且因此在GM-MBP滤波器内更少需要计算成本。基于出生强度和生存分布,显示了GM-MBP过滤器的进一步性能改进,该分布表明了传感器的公共视野和异步测量之间的时间步骤的变化。

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