Abstract

The localization system of low-cost autonomous vehicles such as autonomous sweeper requires a highly lateral localization accuracy as the vehicle needs to keep a near lateral-distance between the side brush system and the road curb. Existing methods usually rely on a global navigation satellite system that often loses signal in a cluttered environment such as sweeping streets between high buildings and trees. In a GPS-denied environment, map-based methods are often used such as visual and LiDAR odometry systems. Apart from heavy computation costs from feature extractions, they are too expensive to meet the low-price market of the low-cost autonomous vehicles. To address these issues, we propose a mono-vision based lateral localization system of an autonomous sweeper. Our system relies on a fish-eye camera and precisely detects road curbs with a deep curb detection network. Curbs locations are then referred to as straightforward marks to control the lateral motion of the vehicle. With our self-recorded dataset, our curb detection network achieves 93% pixel-level precision. In addition, experiments are performed with an intelligent sweeper to prove the accuracy and robustness of our proposed approach. Results demonstrate that the average lateral distance error and the maximum invalid rate are within 0.035 m and 9.2%, respectively.

Highlights

  • The localization system of low-cost autonomous vehicles such as autonomous sweeper requires a highly lateral localization accuracy as the vehicle needs to keep a near lateral-distance between the side brush system and the road curb

  • The easiest way to obtain the location of vehicles is using a global navigation satellite system (GNSS) with an inertial navigation system (INS), which is widely used for autonomous vehicles running in an open area such as on a highway [1,2]

  • Inspired by the region proposals widely used by object detection networks [23,24,25], we develop our curb region of interest (CRoI) module based on region proposal networks (RPN) introduced in Faster-RCNN [25]

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Summary

Introduction

The localization system of low-cost autonomous vehicles such as autonomous sweeper requires a highly lateral localization accuracy as the vehicle needs to keep a near lateral-distance between the side brush system and the road curb. Apart from heavy computation costs from feature extractions, they are too expensive to meet the low-price market of the low-cost autonomous vehicles To address these issues, we propose a mono-vision based lateral localization system of an autonomous sweeper. In a cluttered environment such as streets inside high buildings and trees, or in a GPS-denied environment such as a parking garage, GNSS signals are not feasible To overcome this problem, several map-based methods are developed, where the features extracted from the environments using LiDARs, cameras, or other sensors are matched to the HD digital map to aid localization [3,4,5,6,7,8,9,10,11].

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