Mobile robot floor classification using motor current and accelerometer measurements

Yanming Pei, L. Kleeman
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引用次数: 3

Abstract

Accurate localisation of an indoor robot critically depends on the odometry calibration which varies with different types of floor surfaces. Motion control accuracy of robots can be improved by independently calibrating odometry parameters for each floor surface. This paper presents a new robot floor classification system based on motor current measurements with compensation for variations in the floor inclination angles. The motor current is proportional to the rolling resistance on a flat floor when the robot travels at a constant velocity. We show that commonly occurring small deviations of less than one degree in the inclination of indoor floors significantly affects motor current measurements. The paper compensates for floor inclination variations with a low cost accelerometer. Floors are classified using a Support Vector Machine (SVM) with an accuracy of 95% for a 0.2 m travelling distance and 4 indoor surfaces that include similar carpets. Experimental results show that our proposed method significantly improves a previous floor classification system based on a colour sensor. Our previous work has shown that correct floor classification can improve robot motion control through more accurate odometry calibration, localisation, mapping and path planning.
移动机器人地板分类使用电机电流和加速度计测量
室内机器人的精确定位关键取决于里程计校准,里程计校准随不同类型的地板表面而变化。通过对每个地板表面的里程计参数进行独立标定,可以提高机器人的运动控制精度。提出了一种基于电机电流测量并补偿地板倾角变化的机器人地板分类系统。当机器人以恒定速度行进时,电机电流与平坦地面上的滚动阻力成正比。我们表明,室内地板倾斜度小于1度的小偏差通常会显著影响电机电流测量。本文用低成本加速度计补偿了地板倾角的变化。使用支持向量机(SVM)对地板进行分类,在0.2米的行进距离和包含类似地毯的4个室内表面上,准确率为95%。实验结果表明,该方法显著改善了基于颜色传感器的地板分类系统。我们之前的工作表明,正确的地板分类可以通过更精确的里程计校准、定位、映射和路径规划来改善机器人的运动控制。
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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