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Testing Driver Skill for High-Speed Autonomous Vehicles

机译:测试高速自动驾驶汽车的驾驶员技能

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The 2005 DARPA Grand Challenge, a 212-kilometer race through the Mojave Desert, showcased the state of the art in high-speed, autonomous navigation of trails and roads. To win the challenge, a team's robot had to complete the course faster than any other robot, and it had to do so within 10 hours. Carnegie Mellon University's Red Team developed two robots, which used a combination of autonomous and human preplanning to become two of only four robots to complete the Grand Challenge. The robots used onboard sensors to adjust a preplanned route to avoid obstacles and correct for position-estimation errors. To be successful, teams had to develop innovative algorithms and systems - and rigorously test them to verify performance. The Red Team used the tests regressively to evaluate how unit changes in hardware and software affected the robots' overall driving ability
机译:2005年DARPA大挑战赛是在莫哈韦沙漠(Mojave Desert)进行的长达212公里的比赛,在高速,自动的小路和道路导航中展示了最先进的技术。为了赢得挑战,团队的机器人必须比其他任何机器人都更快地完成课程,而且必须在10小时内完成。卡内基梅隆大学的红色团队开发了两个机器人,这些机器人结合了自主和人为的预先计划,使其成为完成大挑战的仅有的四个机器人中的两个。机器人使用车载传感器来调整预先计划的路线,以避开障碍物并纠正位置估计错误。为了获得成功,团队必须开发创新的算法和系统-并对其进行严格测试以验证性能。红队使用回归测试来评估硬件和软件的单位变化如何影响机器人的整体驾驶能力

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