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Argos: Princeton University's Entry in the 2009 Intelligent Ground Vehicle Competition

机译:Argos:普林斯顿大学参加2009年智能地面车辆竞赛

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摘要

In this paper, we present Argos, an autonomous ground robot built for the 2009 Intelligent Ground Vehicle Competition (IGVC). Discussed are the significant improvements over its predecessor from the 2008 IGVC, Kratos. We continue to use stereo vision techniques to generate a cost map of the environment around the robot. Lane detection is improved through the use of color filters that are robust to changing lighting conditions. The addition of a single-axis gyroscope to the sensor suite allows accurate measurement of the robot's yaw rate and compensates for wheel slip, vastly improving state estimation. The combination of the D~* Lite algorithm, which avoids unnecessary re-planning, and the Field D~* algorithm, which allows us to plan much smoother paths, results in an algorithm that produces higher quality paths in the same amount of time as methods utilizing A~*. The successful implementation of a crosstrack error navigation law allows the robot to follow planned paths without cutting corners, reducing the chance of collision with obstacles. A redesigned chassis with a smaller footprint and a bi-level design, combined with a more powerful drivetrain, makes Argos much more agile and maneuverable compared to its predecessor. At the 2009 IGVC, Argos placed first in the Navigation Challenge.
机译:在本文中,我们介绍了为2009年智能地面车辆竞赛(IGVC)构建的自主地面机器人Argos。讨论的是与2008年IGVC的前身Kratos相比的重大改进。我们将继续使用立体视觉技术来生成机器人周围环境的成本图。车道检测通过使用对照明条件变化稳定的彩色滤光片得到改善。在传感器套件中增加了单轴陀螺仪,可以精确测量机器人的横摆率并补偿车轮打滑,从而大大改善了状态估计。 D〜* Lite算法避免了不必要的重新规划,而Field D〜*算法使我们能够规划更平滑的路径,这导致算法可以在相同的时间内产生更高质量的路径利用A〜*的方法。交叉轨迹错误导航法则的成功实施使机器人能够遵循计划的路径而不会出现弯道,从而减少了与障碍物碰撞的机会。经过重新设计的底盘具有较小的占地面积和双层设计,再加上更强大的动力传动系统,与以前的产品相比,使Argos更加灵活和可操纵。在2009年IGVC上,Argos在导航挑战赛中排名第一。

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