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Multi-Object Tracking Using Poisson Multi-Bernoulli Mixture Filtering For Autonomous Vehicles

机译:使用Poisson Multi-Bernoulli混合滤波的多对象跟踪自动车辆

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The ability of an autonomous vehicle to perform 3D tracking is essential for safe planing and navigation in cluttered environments. The main challenges for multi-object tracking (MOT) in autonomous driving applications reside in the inherent uncertainties regarding the number of objects, when and where the objects may appear and disappear, and uncertainties regarding objects’ states. Random finite set (RFS) based approaches can naturally model these uncertainties accurately and elegantly, and they have been widely used in radar-based tracking applications. In this work, we developed an RFS-based MOT framework for 3D LiDAR data. In partiuclar, we propose a Poisson multi-Bernoulli mixture (PMBM) filter to solve the amodal MOT problem for autonomous driving applications. To the best of our knowledge, this represents a first attempt for employing an RFS-based approach in conjunction with 3D LiDAR data for MOT applications with comprehensive validation using challenging datasets made available by industry leaders. The superior experimental results of our PMBM tracker on public Waymo and Argoverse datasets clearly illustrate that an RFS-based tracker outperforms many state-of-the-art deep learning-based and Kalman filter-based methods, and consequently, these results indicate a great potential for further exploration of RFS-based frameworks for 3D MOT applications.
机译:自主车辆执行3D跟踪的能力对于杂乱环境中的安全刨花和导航是必不可少的。自主驾驶应用中的多目标跟踪(MOT)的主要挑战驻留在关于对象数量的固有的不确定性,当对象可能出现和消失的何时何地以及对象状态的不确定性。随机有限集(RFS)的方法可以自然地和优雅地模拟这些不确定性,并且它们已广泛用于基于雷达的跟踪应用。在这项工作中,我们开发了一种基于RFS的3D LIDAR数据的MOT框架。在Partiuclar中,我们提出了一种泊松多Bernoulli混合物(PMBM)滤波器,以解决自主驾驶应用的Amodal MOT问题。据我们所知,这代表了使用基于RFS的方法与MOT应用的3D LIDAR数据一起使用,使用行业领导者提供的具有挑战性的数据集进行全面验证。我们在公共Waymo和协会数据集上的PMBM追踪器的优越实验结果清楚地说明了基于RFS的跟踪器优于基于最先进的深度学习和基于卡尔曼滤波器的方法,因此这些结果表明了很棒的进一步探索基于RFS的3D MOT应用框架的潜力。

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