A Hybrid Control Architecture For Autonomous Driving In Urban Environment

Chanyoung Jung, Seokwoo Jung, D. Shim
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引用次数: 2

Abstract

Autonomous driving in an urban environment is one of the most actively studied topics. To date, many studies on autonomous driving can be classified into two main approaches: 1.local perception-based approach 2.global path tracking-based approach. However, each approach has its own limitations for fully autonomous driving. In the case of perception-based approach, it is impossible to autonomously drive to the global destination because it only runs locally within the sensor range. On the other hand, the path tracking-based approach relies heavily on accurate navigation. For accurate navigation, there are many studies using expensive equipment or extremely precise and detailed maps, but they have not been resolved yet, and they are also not practical. In this paper, we address the problem of autonomous driving in an urban environment through the proposed hybrid control architecture. Proposed control architecture is designed to be complementary of local perception-based and global path tracking-based approaches. Especially, end-to-end deep learning based autonomous driving, which mimics human driving, is applied as a local perception-based approach. In addition, path tracking-based autonomous driving is performed in an environment where directional information to the destination is required, such as intersections. At the same time, our hybrid control architecture effectively compensates for the navigation error using ICP matching between the perception-based driven trajectory and the global path to the destination without any highly detailed prior map or expensive equipment. The performance of the proposed architecture on a full-scale autonomous vehicle is verified through experiments in the urban environment.
城市环境下自动驾驶的混合控制体系
城市环境下的自动驾驶是目前研究最为活跃的课题之一。迄今为止,许多关于自动驾驶的研究可以分为两种主要方法:1。基于局部感知的方法基于全局路径跟踪的方法。然而,对于完全自动驾驶来说,每种方法都有其局限性。在基于感知的方法中,由于它只在传感器范围内的局部运行,因此不可能自动驾驶到全局目的地。另一方面,基于路径跟踪的方法严重依赖于精确导航。对于精确导航,有许多研究使用昂贵的设备或极其精确和详细的地图,但它们尚未得到解决,而且它们也不实用。在本文中,我们通过提出的混合控制体系结构解决了城市环境中的自动驾驶问题。所提出的控制体系结构旨在补充基于局部感知和基于全局路径跟踪的方法。特别是基于端到端深度学习的自动驾驶,它模仿人类驾驶,作为一种基于局部感知的方法被应用。此外,基于路径跟踪的自动驾驶是在需要目的地方向信息的环境中进行的,例如十字路口。同时,我们的混合控制架构利用基于感知的驱动轨迹和到达目的地的全局路径之间的ICP匹配有效地补偿了导航误差,而无需任何非常详细的事先地图或昂贵的设备。通过在城市环境中的实验,验证了该架构在全尺寸自动驾驶汽车上的性能。
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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