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Indoor robotic terrain classification via angular velocity based hierarchical classifier selection

机译:通过基于角速度的分层分类器选择进行室内机器人地形分类

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This paper proposes a novel approach to terrain classification by wheeled mobile robots, which utilizes vibration data. In our proposed approach, a mobile robot has the ability to categorize terrain types simply by driving over them. Classification of terrain is based on measurements obtained from an inertial measurement unit strapped directly to the robot's chassis. In contrast to the previous approaches, we use acceleration and angular velocity measurements in all cardinal directions to extract over 800 features. Sequential Forward Floating Feature Selection is used to narrow down this large group of features to a set of 15 to 20 that are the most useful. The reduced set of features is used by a Linear Bayes Normal Classifier to classify terrain. Furthermore, different feature sets are generated for different velocity conditions, and the classifier switches based on the current robot velocity. Experimental results are presented that show the strong performance of the proposed system, including 90% accuracy over 20 continuous minutes of driving across different terrains.
机译:本文提出了一种利用振动数据的轮式移动机器人进行地形分类的新方法。在我们提出的方法中,移动机器人可以简单地通过在地形类型上行驶来对其进行分类。地形的分类基于从惯性测量单元获得的测量结果,该惯性测量单元直接绑在机器人的底盘上。与以前的方法相比,我们在所有基本方向上都使用了加速度和角速度测量,以提取800多个特征。顺序前向浮动特征选择用于将这大部分特征缩小为最有用的15到20组。线性贝叶斯正常分类器使用简化的要素集对地形进行分类。此外,针对不同的速度条件生成了不同的特征集,并且分类器基于当前机器人速度进行切换。实验结果表明,该系统具有强大的性能,包括在不同地形上连续行驶20分钟的90%的准确性。

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