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ON SELF-DRIVING CAR SAFETY: OCCUPANCY MAP MODIFICATION WITH RAPID EMERGENCY VEHICLE DETECTION

机译:自驾汽车安全性的研究:快速应急车辆检测的乘车图修改

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Unmanned ground vehicles (UGV) and self-driving cars utilize visual sensors including cameras, Lidars and radars not only for localization and obstacle avoidance purposes but also to generate a 3D map of the surroundings. When an emergency vehicle -such as a fire truck or an ambulance - is approaching, self-driving cars are required to modify their path plan and find a safe spot rapidly. However early detection of a fast approaching emergency vehicle in urban environment is challenging with a visual perception system since it requires direct view without an obstacle in between. To improve the safety of self-driving cars, a localization algorithm is required to maximize the path modification time constraint as well as to minimize location and direction detection time, especially at an intersection in urban environments. To overcome this challenge, we mounted a transducer array on top of a mobile robot and applied beam forming algorithms to predict the location and velocity vector of the remote dynamic vehicle. Even with high uncertainty, this strategy improved time requirement of occupancy grid update which marks all possible unsafe areas to avoid a collision. Two experimental setups of controlled and uncontrolled environments were prepared. Followed by preliminary transducer characteristic analysis in an anechoic chamber, an outdoor experiment with two mobile robots are executed to benchmark the capability of signal processing techniques while both source and observer are in motion.
机译:无人驾驶地面车辆(UGV)和自动驾驶汽车利用视觉传感器,包括摄像机,Lidars和雷达,不仅用于定位和障碍物的目的,还可以生成周围环境的3D地图。当紧急车辆作为消防车或救护车 - 即将来临时,需要自驾驾驶汽车来修改他们的路径计划并快速找到安全点。然而,早期检测城市环境中快速接近的紧急车辆都与视觉感知系统有挑战性,因为它需要直接观点而没有障碍物。为了提高自动驾驶汽车的安全性,需要一种定位算法来最大化路径修改时间约束以及最小化位置和方向检测时间,尤其是在城市环境中的交叉点。为了克服这一挑战,我们将换能器阵列安装在移动机器人顶部并应用波束形成算法以预测远程动态车辆的位置和速度矢量。即使具有高不确定性,该策略即使是占用网格更新的时间要求,它标志着所有可能的不安全区域以避免碰撞。准备了两种控制和不受控制的环境的实验设置。随后在一室内进行初步传感器特征分析,执行具有两个移动机器人的户外实验以基准信号处理技术的能力,而两个源和观察者都在运动。

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