基于全向相机的自动地面车辆实时鲁棒映射

Xiaojin Gong, Bin Xu, C. Reed, C. Wyatt, D. Stilwell
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引用次数: 4

摘要

为了实现海上环境中水面车辆真正自主导航的目标,一项关键任务是检测周围的障碍物,如海岸、码头和其他船只。在本文中,我们展示了一个基于实时视觉的地图系统,该系统使用单个全向相机和导航传感器(GPS和陀螺仪)检测和定位静止障碍物。这项工作的主要挑战是对大量的异常值进行稳健的映射,这些异常值来自水面上的波浪和镜面反射。针对这一问题,提出了一种两步鲁棒异常值抑制方法。给出了在非结构化大尺度环境下的实验结果,并用地形图进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time Robust Mapping for an Autonomous Surface Vehicle using an Omnidirectional Camera
Towards the goal of achieving truly autonomous navigation for a surface vehicle in maritime environments, a critical task is to detect surrounding obstacles such as the shore, docks, and other boats. In this paper, we demonstrate a real-time vision-based mapping system which detects and localizes stationary obstacles using a single omnidirectional camera and navigational sensors (GPS and gyro). The main challenge of this work is to make mapping robust to a large number of outliers, which stem from waves and specular reflections on the surface of the water. To address this problem, a two-step robust outlier rejection method is proposed. Experimental results obtained in unstructured large-scale environments are presented and validated using topographic maps.
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