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Mobility profile and wheelchair driving skills of powered wheelchair users: Sensor-based event recognition using a support vector machine classifier

机译:电动轮椅使用者的移动性和轮椅驾驶技能:使用支持向量机分类器的基于传感器的事件识别

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This paper presents a method to automatically recognize events and driving activities during the use of a powered wheelchair (PW). The method uses a support vector machine classifier, trained from sensor-based data from a datalogging platform installed on the PW. Data from a 3D accelerometer positioned on the back of the PW were collected in a laboratory space during PW driving tasks. 16-segmented events and driving activities (i.e. impacts from different side on different objects, rolling down or up on incline surface, going across threshold of different height) were performed repeatedly (n=25 trials) by one operator at three different speeds (slow, normal, high). We present results from an experiment aiming to classify five different events and driving activities from the sensor data acquired using the datalogging platform. Classification results show the ability of the proposed method to reliably segment 100% of events, and to identify the correct event type in 80% of events.
机译:本文提出了一种在使用电动轮椅(PW)的过程中自动识别事件和驾驶活动的方法。该方法使用支持向量机分类器,该分类器是根据来自安装在PW上的数据记录平台的基于传感器的数据进行训练的。在PW驾驶任务期间,来自位于PW背面的3D加速度计的数据是在实验室空间中收集的。一名操作员以三种不同的速度(慢速)重复执行(n = 25次试验)16段事件和驾驶活动(即,从不同侧面撞击不同物体,在倾斜表面上滚动或滚动,越过不同高度的阈值) ,正常,高)。我们提出了一项实验结果,旨在从使用数据记录平台获取的传感器数据中分类五个不同的事件和驾驶活动。分类结果表明,该方法能够可靠地分割100%的事件,并在80%的事件中识别正确的事件类型。

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