移动机器人的实用自我运动估计

Shawn Scharer, J. Baltes, J. Anderson
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引用次数: 3

摘要

准确的自我运动估计是人类比较容易解决的难题。本文描述了两种结合使用的方法,仅从视觉上估计智能自动驾驶汽车的自我运动。首先,采用互相关方法在图像中选择有希望的斑块。利用该贴片的光流信息来确定智能自动驾驶汽车的线速度和角速度。然后使用图像中的线条来估计车辆的自我运动。线的梯度以及到线的距离允许计算当前的车轮速度。这两种方法都在真正的机器人上实现了,并在寻宝比赛中得到了测试。这些方法极大地提高了生成的环境地图的勘探和精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Practical ego-motion estimation for mobile robots
Accurate ego-motion estimation is a difficult problem that humans perform with relative ease. This paper describes two methods that are used in conjunction to estimate the ego motion of an intelligent autonomous vehicle from vision alone. First, a cross-correlation method is used to select a promising patch in the image. The optical flow information for this patch is used to determine linear and angular velocity of the intelligent autonomous vehicle. Lines in the image are then used to provide an estimate of the ego motion of the vehicle. The gradient of the line as well as the distance to the line allow the computation of current wheel velocities. Both methods have been implemented on real robots and have been tested in a treasure hunt competition. These methods greatly improved the exploration as well as accuracy of the generated maps of the environment.
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