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Automatic Detection and Classification of Unsafe Events During Power Wheelchair Use

机译:电动轮椅使用过程中不安全事件的自动检测和分类

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摘要

Using a powered wheelchair (PW) is a complex task requiring advanced perceptual and motor control skills. Unfortunately, PW incidents and accidents are not uncommon and their consequences can be serious. The objective of this paper is to develop technological tools that can be used to characterize a wheelchair user’s driving behavior under various settings. In the experiments conducted, PWs are outfitted with a datalogging platform that records, in real-time, the 3-D acceleration of the PW. Data collection was conducted over 35 different activities, designed to capture a spectrum of PW driving events performed at different speeds (collisions with fixed or moving objects, rolling on incline plane, and rolling across multiple types obstacles). The data was processed using time-series analysis and data mining techniques, to automatically detect and identify the different events. We compared the classification accuracy using four different types of time-series features: 1) time-delay embeddings; 2) time-domain characterization; 3) frequency-domain features; and 4) wavelet transforms. In the analysis, we compared the classification accuracy obtained when distinguishing between safe and unsafe events during each of the 35 different activities. For the purposes of this study, unsafe events were defined as activities containing collisions against objects at different speed, and the remainder were defined as safe events. We were able to accurately detect 98% of unsafe events, with a low (12%) false positive rate, using only five examples of each activity. This proof-of-concept study shows that the proposed approach has the potential of capturing, based on limited input from embedded sensors, contextual information on PW use, and of automatically characterizing a user’s PW driving behavior.
机译:使用电动轮椅(PW)是一项复杂的任务,需要高级的感知和运动控制技能。不幸的是,PW事件和事故并不少见,其后果可能很严重。本文的目的是开发可用于表征轮椅使用者在各种设置下的驾驶行为特征的技术工具。在进行的实验中,PW配备了一个数据记录平台,可实时记录PW的3-D加速度。在35种不同的活动中进行了数据收集,这些活动旨在捕获以不同速度执行的一系列PW驾驶事件(与固定或移动物体的碰撞,在倾斜平面上滚动以及在多种类型的障碍物上滚动)。使用时间序列分析和数据挖掘技术处理数据,以自动检测和识别不同事件。我们使用四种不同类型的时间序列特征对分类准确性进行了比较:1)时延嵌入; 2)时域表征; 3)频域特征;和4)小波变换。在分析中,我们比较了在35个不同活动中的每个活动中区分安全事件和不安全事件时获得的分类准确性。为了本研究的目的,不安全事件被定义为包含以不同速度与物体碰撞的活动,其余被定义为安全事件。我们仅使用每个活动的五个示例就可以准确地检测出98%的不安全事件,假阳性率低(为12%)。这项概念验证研究表明,所提出的方法具有潜力,可以基于嵌入式传感器的有限输入来捕获有关PW使用的上下文信息,并可以自动表征用户的PW驾驶行为。

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