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Machine Learning Based Skill-Level Classification for Personal Mobility Devices Using Only Operational Characteristics

机译:仅基于操作特征的基于个人机器设备的基于机器学习的技能水平分类

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Some electric-powered wheelchairs are recently redefined as personal mobility devices. Their users are not only elderly or handicapped people, but also passengers with large baggage or pedestrians going from station to destination, i.e., last-mile transport. Consequently, people with different operation skills and expectations on personal mobility would become new users of this kind of devices. Safe and comfort travel in human co-existing environment such as sidewalks and airports is a social expectation for personal mobility. In order to realize this, understanding the operation skill of each user by a practical and simple method is essential. This paper thus introduced a skill level classification method by machine learning using only joystick data as input. In order to determine the number of skill level clusters, basic 26 features of joystick operation data are used for unsupervised clustering (single-linkage). We then made evaluation indexes by using speed, speed control, and direction control. For a five-level classification by using gradient boosting as supervised learning, we achieved a 67% accuracy (tolerance: 0) and a 98% accuracy (tolerance: 1). Further analysis of the feature importance of gradient boosting revealed key features to a good operation. Results also show that skill level differed among people with different driving experiences.
机译:最近将一些电动轮椅重新定义为个人移动设备。他们的用户不仅是老年人或残障人士,而且还有乘客与车站到目的地的大行李或行人,即最后一英里的运输。因此,具有不同操作技能和个人移动性期望的人将成为这种设备的新用户。人行道和机场等人类共存环境中安全和舒适的旅行是对个人移动的社会期望。为了实现这一点,通过实用和简单的方法了解每个用户的操作技能是必不可少的。因此,通过仅使用操纵杆数据作为输入,通过机器学习引入了技能级分类方法。为了确定技能级别集群的数量,操纵杆操作数据的基本26特征用于无监督的聚类(单连杆)。然后我们使用速度,速度控制和方向控制进行评估指标。对于使用渐变提升为监督学习的五级分类,我们实现了67%的精度(公差:0)和98%的精度(公差:1)。进一步分析梯度提升的特征重要性,揭示了良好操作的关键特征。结果还表明,具有不同驾驶经验的人们的技能水平不同。

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