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Generalized Labeled Multi-Bernoulli Extended Target Tracking Based on Gaussian Process Regression

机译:基于高斯进程回归的广义标记多Bernoulli扩展目标跟踪

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For the problems that Gamma Gaussian Inverse Wishart Cardinalized Probability Hypothesis Density (GGIW-CPHD) filter cannot accurately estimate the extended target shape and has a bad tracking performance under the condition of low SNR, a new generalized labeled multi-Bernoulli algorithm based on Gaussian process regression is proposed. The algorithm adopts the star convex to model the extended target, and realizes the online learning of the Gaussian process by constructing the state space model to complete the estimation of the extended target shape. At the same time, in the low SNR environment, the target motion state is tracked by the good tracking performance of the generalized label Bernoulli filter. Simulation results show that for any target with unknown shape, the proposed algorithm can well offer its extended shape and in the low SNR environment it can greatly improve the accuracy and stability of target tracking.
机译:对于Gamma高斯逆符合Cardinalization概率假设密度(GGIW-CPHD)滤波器不能准确地估计扩展目标形状的问题,并且在低SNR条件下具有较差的跟踪性能,基于高斯过程的新的广义标记多Bernouli算法提出了回归。该算法采用星形凸面来模拟扩展目标,通过构建状态空间模型来实现高斯过程来完成扩展目标形状的估计来实现高斯过程的在线学习。同时,在低SNR环境中,通过广义标签Bernoulli滤波器的良好跟踪性能跟踪目标运动状态。仿真结果表明,对于具有未知形状的目标,所提出的算法可以很好地提供其扩展的形状和低SNR环境,它可以大大提高目标跟踪的准确性和稳定性。

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