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Model-free detection and tracking of dynamic objects with 2D lidar

机译:使用2D激光雷达对运动物体进行无模型检测和跟踪

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摘要

We present a new approach to detection and tracking of moving objects with a 2D laser scanner for autonomous driving applications. Objects are modelled with a set of rigidly attached sample points along their boundaries whose positions are initialized with and updated by raw laser measurements, thus allowing a non-parametric representation that is capable of representing objects independent of their classes and shapes. Detection and tracking of such object models are handled in a theoretically principled manner as a Bayes filter where the motion states and shape information of all objects are represented as a part of a joint state which includes in addition the pose of the sensor and geometry of the static part of the world. We derive the prediction and observation models for the evolution of the joint state, and describe how the knowledge of the static local background helps in identifying dynamic objects from static ones in a principled and straightforward way. Dealing with raw laser points poses a significant challenge to data association. We propose a hierarchical approach, and present a new variant of the well-known Joint Compatibility Branch and Bound algorithm to respect and take advantage of the constraints of the problem introduced through correlations between observations. Finally, we calibrate the system systematically on real world data containing 7,500 labelled object examples and validate on 6,000 test cases. We demonstrate its performance over an existing industry standard targeted at the same problem domain as well as a classical approach to model-free object tracking.
机译:我们提出了一种用于自动驾驶应用的2D激光扫描仪检测和跟踪移动物体的新方法。使用沿其边界的一组刚性附着的采样点对对象进行建模,这些采样点的位置通过原始激光测量进行初始化并通过原始激光测量值进行更新,因此可以进行非参数表示,从而能够表示与对象的类别和形状无关的对象。此类对象模型的检测和跟踪以理论上原则上的方式作为贝叶斯滤波器进行处理,其中所有对象的运动状态和形状信息均表示为关节状态的一部分,该状态还包括传感器的姿态和传感器的几何形状。世界的静态部分。我们导出了关节状态演变的预测和观察模型,并描述了静态局部背景的知识如何以有原则和直接的方式帮助从静态对象中识别动态对象。处理原始激光点对数据关联提出了重大挑战。我们提出了一种分层方法,并提出了一种著名的联合兼容性分支定界算法的新变体,以尊重和利用通过观察之间的相关性引入的问题约束。最后,我们根据包含7,500个带标签对象示例的真实世界数据对系统进行了系统校准,并在6,000个测试用例上进行了验证。我们展示了其针对相同问题领域的现有行业标准以及经典的无模型对象跟踪方法的性能。

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