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首页> 外文期刊>Measurement and Control: Journal of the Institute of Measurement and Control >Innovative unscented transform-based particle cardinalized probability hypothesis density filter for multi-target tracking
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Innovative unscented transform-based particle cardinalized probability hypothesis density filter for multi-target tracking

机译:用于多目标跟踪的创新无意转换基础粒子基数化概率假设滤波器

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摘要

Multi-target tracking is widely applied in video surveillance systems. As we know, although the standard particle cardinalized probability hypothesis density filter can estimate state of targets, it is difficult to define the proposal distribution function in prediction stage. Since the robust particles cannot be effectively drawn, the actual tracking accuracy should be enhanced. In this paper, an innovative unscented transform-based particle cardinalized probability hypothesis density filter is derived. Considering the different state spaces, we use the auxiliary particle method and then draw robust particles from the modified distributions in order to estimate the position of targets. Simultaneously, we present the recursion of the optimized Kalman gain to improve the general unscented transform for the velocity estimates. Using the track label, we further integrate them in the framework of the jump Markov model. The simulation results show that the proposed filter has advances in the multi-target tracking scenes. Moreover, the experiments indicate that the filter can track mobile targets with satisfactory results.
机译:多目标跟踪广泛应用于视频监控系统。如我们所知,尽管标准粒子基团化概率假设密度滤波器可以估计目标状态,但难以在预测阶段定义提案分布函数。由于无法有效地绘制鲁棒粒子,因此应增强实际的跟踪精度。本文介绍了一种创新的基于转换的粒子基团化概率假设密度滤波器。考虑到不同的状态空间,我们使用辅助粒子方法,然后从修改的分布绘制鲁棒粒子以估计目标的位置。同时,我们介绍了优化的卡尔曼增益的递归,以改善速度估计的一般无编码变换。使用曲目标签,我们进一步将它们集成在跳转马尔可夫模型的框架中。仿真结果表明,所提出的滤波器在多目标跟踪场景中具有进展。此外,实验表明,过滤器可以跟踪具有令人满意的效果的移动目标。

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