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Automatically characterizing driving activities onboard smart wheelchairs from accelerometer data

机译:根据加速度计数据自动表征智能轮椅上的驾驶活动

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Wheelchairs play an important role for people living with locomotor impairments. However, power wheelchair users frequently report both minor and major accidents. The goal of this paper is to advocate for the use of robotic technology, in particular sensor-based detection and automatic classification of activities, to track and characterize activities onboard smart wheelchairs. Experiments were conducted in a clinical setting, in which experienced wheelchair users were asked to conduct a set of typical wheelchair activities. This paper presents an end-to-end pipeline for accurately classifying these activities from accelerometer data using signal processing and machine learning methods. Our classifier achieved an overall accuracy of around 50% in a more than 25 classes classification problem, compared to less than 4% with a random classifier. We also explored the possibility of discovering hidden patterns of activities using unsupervised topic modeling methods. We demonstrated the power of the inferred patterns with two use cases, namely story telling and hazard discovery. Altogether, this work provides new tools for characterizing the usage of smart wheelchairs with typical users.
机译:轮椅对于运动功能障碍者起着重要的作用。但是,电动轮椅使用者经常报告轻微和重大事故。本文的目的是提倡使用机器人技术,特别是基于传感器的活动检测和自动分类,以跟踪和表征智能轮椅上的活动。实验是在临床环境中进行的,其中要求经验丰富的轮椅使用者进行一系列典型的轮椅活动。本文提出了一种端到端管道,可使用信号处理和机器学习方法从加速度计数据中对这些活动进行准确分类。在超过25个类别的分类问题中,我们的分类器的总体准确度约为50%,而在随机分类器中,该分类器的整体准确率则不到4%。我们还探讨了使用无监督主题建模方法发现活动隐藏模式的可能性。我们通过两个用例演示了推理模式的强大功能,即讲故事和发现危害。总而言之,这项工作为表征典型用户对智能轮椅的使用情况提供了新的工具。

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