Vehicle and object models for robust tracking in traffic scenes using laser range images

D. Streller, Kay Furstenberg, Dietmayet
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引用次数: 94

Abstract

Detection and modeling of dynamic traffic scenes around a, driving passenger car is the long-term aim of the research project ARGOS at the University of Ulm. Each object close to the own car should be modeled and tracked using a specific individual dynamic model. The object classification is based on the geometric outlines and the dynamic behavior. For any sensor combinations usable to detect the environment, the velocity of the objects can be measured relatively to the movement of own vehicle. To. get the absolute velocity of the objects, the motion of the own vehicle must be measured for which the well know bicycle model is used. This ego-model is fed by sensor signals provided anyway by ABS, ASR or ESP. To eliminate the own motion from the object measurements, several coordinate transformations are required in the different stages of data processing. A proposal is given on how to solve this problem when using a laser range finder as a sensing device. Moreover, a simple object model is introduced for this task in order to save processing power. The algorithms can extended towards a multihypothesis approach which will result a more robust classification and tracking algorithm.
基于激光距离图像的交通场景鲁棒跟踪车辆和目标模型
乌尔姆大学ARGOS研究项目的长期目标是对驾驶乘用车周围的动态交通场景进行检测和建模。应该使用特定的单个动态模型对靠近自己汽车的每个对象进行建模和跟踪。目标分类是基于几何轮廓和动态行为。对于任何可用于检测环境的传感器组合,物体的速度可以相对于自己车辆的运动进行测量。出现。要得到物体的绝对速度,必须测量自身车辆的运动,而这种运动是用众所周知的自行车模型来测量的。这种自我模型是由ABS、ASR或ESP提供的传感器信号馈送的。为了消除物体测量中的自身运动,在数据处理的不同阶段需要进行多次坐标转换。提出了激光测距仪作为传感装置时如何解决这一问题的方案。此外,为了节省处理能力,还引入了一个简单的对象模型。该算法可以扩展到多假设方法,从而产生更鲁棒的分类和跟踪算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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