New Integrated Navigation Scheme for the Level 4 Autonomous Vehicles in Dense Urban Areas

L. Hsu, W. Wen
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引用次数: 2

Abstract

Accurate and globally referenced positioning is fatal to the safety-critical autonomous driving vehicles (ADV). Multi-sensor integration is becoming ubiquitous for ADV to guarantee the robustness and accuracy of the navigation system. Unfortunately, the existing sensor integration systems are still heavily challenged in urban canyons, such as Tokyo and Hong Kong. The main reason behind the performance degradation is due to the varying environmental conditions, such as tall buildings and surrounded dynamic objects. GNSS receiver is an indispensable sensor for ADV, which relies heavily on the environmental conditions. The performance of GNSS can be significantly affected by signal reflections and blockages from buildings or dynamic objects. With the enhanced capability of perception, fully or partially sensing the environment real-time becomes possible using onboard sensors, such as camera or LiDAR. Inspired by the fascinating progress in perception, this paper proposes a new integrated navigation scheme, the perception aided sensor integrated navigation (PASIN). Instead of directly integrating the sensor measurements from diverse sensors, the PASIN leverages the onboard and real-time perception to assist the single measurement, such as GNSS positioning, before it is integrated with other sensors including inertial navigation systems (INS). This paper reviews several PASIN, especially on the GNSS positioning. As an example, GNSS is aided by the perception of a camera or LiDAR sensors, are conducted in dense urban canyons to validate this novel sensor integration scheme. The proposed PASINS can also be extended to LiDAR- or visual- centered navigation system in the future.
城市人口密集地区4级自动驾驶汽车综合导航新方案
准确的全局参考定位对安全关键型自动驾驶汽车(ADV)至关重要。为了保证导航系统的鲁棒性和准确性,多传感器集成在自动驾驶汽车中变得越来越普遍。不幸的是,现有的传感器集成系统在东京和香港等城市峡谷中仍然受到严重挑战。性能下降的主要原因是由于不同的环境条件,如高层建筑和周围的动态物体。GNSS接收机是ADV中不可缺少的传感器,它对环境条件的依赖性很大。GNSS的性能会受到来自建筑物或动态物体的信号反射和阻塞的显著影响。随着感知能力的增强,使用车载传感器(如摄像头或激光雷达)完全或部分实时感知环境成为可能。受感知技术发展的启发,本文提出了一种新的组合导航方案——感知辅助传感器组合导航(PASIN)。PASIN不是直接集成来自不同传感器的传感器测量,而是利用机载和实时感知来辅助单个测量,例如GNSS定位,然后再与其他传感器集成,包括惯性导航系统(INS)。本文综述了几种PASIN,特别是GNSS定位。例如,GNSS由相机或激光雷达传感器的感知辅助,在密集的城市峡谷中进行,以验证这种新颖的传感器集成方案。所提出的PASINS在未来也可以扩展到以激光雷达或视觉为中心的导航系统。
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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