基于学习的推杆驱动助力轮椅意向分类框架研究

M. Khalili, Tianxin Tao, Ruolan Ye, Shuyong Xie, Huancheng Yang, H. V. D. Loos, J. Borisoff
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引用次数: 4

摘要

手动轮椅的动力辅助装置的设计和使用有所增加,以减轻手动轮椅使用时的物理负荷。推杆激活的动力辅助轮(PAPAW)是动力辅助装置的一个例子,它取代了MWC的传统车轮。虽然使用papaw为MWC用户提供了一些好处,但它也会给轮椅的操纵带来困难。在这项研究中,我们研究了轮椅在使用手动轮和动力轮时的推进特性。我们用左右车轮的角速度来计算轮椅的线速度和角速度。分析的结果显示,动力轮的控制器并没有优化设计,以反映轮椅使用者的意图。为了解决在PAPAWs上协调推送的一些挑战,我们提出了一个用户意图检测框架的设计。我们使用MWC实验的运动学数据,测试了六种监督学习算法,将“不移动”、“直线移动”、“左转”和“右转”四种运动分类。我们发现所有的分类算法在确定运动类型时都具有较高的准确率和较低的计算时间。所提出的意图检测框架可用于设计考虑轮椅使用者个性化特征的基于学习的papaw控制器。这样一个系统可以改善PAPAW用户的体验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards the Development of a Learning-Based Intention Classification Framework for Pushrim-Activated Power-Assisted Wheelchairs
There has been a growth in the design and use of power assist devices for manual wheelchairs (MWCs) to alleviate the physical load of MWC use. A pushrim-activated power-assisted wheel (PAPAW) is an example of a power assist device that replaces the conventional wheel of a MWC. Although the use of PAPAWs provides some benefits to MWC users, it can also cause difficulties in maneuvering the wheelchair. In this research, we examined the characteristics of wheelchair propulsion when using manual and powered wheels. We used the left and right wheels’ angular velocity to calculate the linear and angular velocity of the wheelchair. Results of this analysis revealed that the powered wheel’s controller is not optimally designed to reflect the intentions of a wheelchair user. To address some of the challenges with coordinating the pushes on PAPAWs, we proposed the design of a user-intention detection framework. We used the kinematic data of MWC experiments and tested six supervised learning algorithms to classify one of four movements: “not moving”, “moving straight forward”, “turning left”, and “turning right”. We found that all the classification algorithms determined the type of movement with high accuracy and low computation time. The proposed intention detection framework can be used in the design of learning-based controllers for PAPAWs that take into account the individualized characteristics of wheelchair users. Such a system may improve the experience of PAPAW users.
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