Department of Control for Transportation and Vehicle Systems, Budapest University of Technology and Economics, H-1111 Budapest, Hungary.
Systems and Control Lab, Institute for Computer Science and Control, H-1111 Budapest, Hungary.
Sensors (Basel). 2021 Jan 11;21(2):472. doi: 10.3390/s21020472.
This paper considers the object detection and tracking problem in a road traffic situation from a traffic participant's perspective. The information source is an automotive radar which is attached to the ego vehicle. The scenario characteristics are varying object visibility due to occlusion and multiple detections of a vehicle during a scanning interval. The goal is to maintain and report the state of undetected though possibly present objects. The proposed algorithm is based on the multi-object Probability Hypothesis Density filter. Because the PHD filter has no memory, the estimate of the number of objects present can change abruptly due to erroneous detections. To reduce this effect, we model the occlusion of the object to calculate the state-dependent detection probability. Thus, the filter can maintain unnoticed but probably valid hypotheses for a more extended period. We use the sequential Monte Carlo method with clustering for implementing the filter. We distinguish between detected, undetected, and hidden particles within our framework, whose purpose is to track hidden but likely present objects. The performance of the algorithm is demonstrated using highway radar measurements.
本文从交通参与者的角度出发,考虑了道路交通环境下的目标检测和跟踪问题。信息源为安装在自身车辆上的车载雷达。该场景的特点是由于遮挡而导致目标可见性的变化,以及在扫描间隔期间对同一车辆的多次检测。目标是维护和报告可能存在但尚未检测到的目标的状态。所提出的算法基于多目标概率假设密度滤波器(PHD)。由于 PHD 滤波器没有记忆,因此由于错误检测,存在的目标数量的估计可能会突然发生变化。为了减少这种影响,我们对物体的遮挡进行建模,以计算与状态相关的检测概率。因此,滤波器可以在更长的时间内保持未被注意但可能有效的假设。我们使用带有聚类的序贯蒙特卡罗方法来实现该滤波器。在我们的框架中,我们区分已检测、未检测和隐藏粒子,其目的是跟踪隐藏但可能存在的目标。使用高速公路雷达测量来演示算法的性能。