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Dynamic Multi-LiDAR Based Multiple Object Detection and Tracking

机译:基于动态Multi-LiDAR的多目标检测与跟踪

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摘要

Environmental perception plays an essential role in autonomous driving tasks and demands robustness in cluttered dynamic environments such as complex urban scenarios. In this paper, a robust Multiple Object Detection and Tracking (MODT) algorithm for a non-stationary base is presented, using multiple 3D LiDARs for perception. The merged LiDAR data is treated with an efficient MODT framework, considering the limitations of the vehicle-embedded computing environment. The ground classification is obtained through a grid-based method while considering a non-planar ground. Furthermore, unlike prior works, 3D grid-based clustering technique is developed to detect objects under elevated structures. The centroid measurements obtained from the object detection are tracked using Interactive Multiple Model-Unscented Kalman Filter-Joint Probabilistic Data Association Filter (IMM-UKF-JPDAF). IMM captures different motion patterns, UKF handles the nonlinearities of motion models, and JPDAF associates the measurements in the presence of clutter. The proposed algorithm is implemented on two slightly dissimilar platforms, giving real-time performance on embedded computers. The performance evaluation metrics by MOT16 and ground truths provided by KITTI Datasets are used for evaluations and comparison with the state-of-the-art. The experimentation on platforms and comparisons with state-of-the-art techniques suggest that the proposed framework is a feasible solution for MODT tasks.
机译:环境感知在自动驾驶任务中起着至关重要的作用,并且在混乱的动态环境(例如复杂的城市场景)中要求稳健性。在本文中,提出了一种针对非平稳基础的鲁棒的多目标检测和跟踪(MODT)算法,该算法使用多个3D LiDAR进行感知。考虑到车载嵌入式计算环境的局限性,使用有效的MODT框架处理合并的LiDAR数据。地面分类是通过考虑非平面地面的基于网格的方法获得的。此外,与现有技术不同,开发了基于3D网格的聚类技术来检测高架结构下的物体。使用交互式多模型无味卡尔曼滤波器-联合概率数据关联过滤器(IMM-UKF-JPDAF)跟踪从对象检测获得的质心测量值。 IMM捕获不同的运动模式,UKF处理运动模型的非线性,而JPDAF在存在混乱的情况下关联测量。所提出的算法在两个稍有不同的平台上实现,可在嵌入式计算机上提供实时性能。 MOT16的性能评估指标和KITTI数据集提供的基本事实用于评估和与最新技术进行比较。在平台上进行的实验以及与最新技术的比较表明,提出的框架是用于MODT任务的可行解决方案。

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