Visual detection and tracking of poorly structured dirt roads

D. Fernández, A. Price
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引用次数: 15

Abstract

Outdoor mobile robots are often faced with the problem of trying to navigate through an unknown environment. Areas that appear simple to humans can be very difficult for a robot to accurately and consistently describe. Poorly structured dirt roads, such as fire-access tracks and bush-walking tracks, are often overlooked in research but are highly important passageways for emergency support crews, such as search-and-rescue teams and firefighters tackling bush fires. This paper presents a method of autonomously detecting and hence tracking such roads using colour vision. Central to the process is a method of characterising the road surface through a statistical colour description, which makes minimal assumptions about the road. A highly simplified and generalised road model is used to ignore the background and contain the road, and weighted control points are used to generate a spline-based trajectory along the road, which is intended to be used for motion-control of a robot trying to traverse these tracks. Inherent to the system is the avoidance or safe traversal of certain types of obstacles. The combination of simple modelling and efficient processing algorithms has resulted in a usable average processing speed of approximately eight frames per second on the 1.7 GHz Pentium-4 test machine
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视觉检测和跟踪结构不良的土路
户外移动机器人经常面临着试图在未知环境中导航的问题。对人类来说很简单的区域对机器人来说很难准确和一致地描述。结构不佳的土路,如消防通道和丛林步行道,在研究中经常被忽视,但对于紧急支援人员,如搜救队和处理丛林火灾的消防员来说,却是非常重要的通道。本文提出了一种利用彩色视觉自动检测和跟踪此类道路的方法。该过程的核心是通过统计颜色描述来表征路面的方法,该方法对道路进行了最小的假设。使用高度简化和广义的道路模型来忽略背景并包含道路,使用加权控制点来生成基于样条的道路轨迹,该轨迹旨在用于机器人试图穿越这些轨迹的运动控制。该系统固有的功能是避免或安全穿越某些类型的障碍物。简单的建模和高效的处理算法相结合,在1.7 GHz的Pentium-4测试机上产生了大约每秒8帧的可用平均处理速度
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