Robot self-localization by means of vision

G. Adorni, G. Destri, M. Mordonini, F. Zanichelli
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引用次数: 16

Abstract

We present an application of vision-based object recognition capabilities to the self-positioning-problem of an autonomous robot. Alphanumeric signs are placed in the robot environment as position markers and perceived through an on-board CCD camera on a pan-tilt head. Sign recognition is performed by a neural network based system, driven by some a-priori knowledge about the characteristics of the objects used as markers (signs). When given a map of the location of markers, the robot is able to estimate its position from the information extracted through perceived images. Marker distances and angular displacements allow the computation of a position uncertainty region for the mobile robot. Even using common, human readable markers, localization is performed with an average position accuracy within a few centimeters.
基于视觉的机器人自定位
我们提出了一种基于视觉的物体识别能力在自主机器人自我定位问题中的应用。字母数字标志被放置在机器人环境中作为位置标记,并通过机载CCD摄像头在一个泛倾斜的头上感知。符号识别是由一个基于神经网络的系统执行的,由一些关于用作标记(符号)的物体特征的先验知识驱动。当给定标记位置的地图时,机器人能够从通过感知图像提取的信息中估计其位置。标记距离和角位移允许计算移动机器人的位置不确定性区域。即使使用普通的、人类可读的标记,定位的平均位置精度也在几厘米以内。
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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