Development of a Learning-Based Intention Detection Framework for Power-Assisted Manual Wheelchair Users

M. Khalili, Yang Zhang, Alexandra Gil, Leo Zhao, Calvin Kuo, H. V. D. Loos, J. Borisoff
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引用次数: 3

Abstract

Pushrim-activated power-assisted wheels (PAPAWs) are assistive technologies that provide on-demand assistance to wheelchair users. PAPAWs operate based on a collaborative control scheme. Therefore, they rely on accurate interpretation of the user’s intent to provide effective propulsion assistance. This paper presents a learning-based approach to predict wheelchair users’ intention when performing a variety of wheelchair activities. We obtained kinematic and kinetic data from manual wheelchair users when performing standard wheelchair activities such as turns and ascents. Our measurements revealed variability in physical capabilities and propulsion habits of different users, therefore, highlighting the need for the development of personalized intention inference models. We used Gaussian Mixture models to label different phases of user-pushrim interactions based on individual user’s wheeling behaviour. Supervised classifiers were trained with each user’s data and these models were used to predict the user’s intentions during different propulsion activities. We found random forest classifiers had high accuracy (>92%) in predicting different states of individual-specific wheelchair propulsion and user intent for 2 participants. This proposed framework is computationally efficient and can be used for real-time prediction of wheelchair users’ intention. The outcome of this clustering-classification pipeline provides relevant information for designing user-specific and adaptive PAPAW controllers.
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基于学习的电动辅助手动轮椅使用者意图检测框架的开发
Pushrim-activated power-assisted wheels (PAPAWs)是一种为轮椅使用者提供按需辅助的辅助技术。PAPAWs基于协作控制方案运行。因此,它们依赖于对用户意图的准确解读来提供有效的推进辅助。本文提出了一种基于学习的方法来预测轮椅使用者在进行各种轮椅活动时的意图。我们获得了手动轮椅使用者在进行标准轮椅活动(如转弯和上坡)时的运动学和动力学数据。我们的测量揭示了不同用户在身体能力和推进习惯上的差异,因此,强调了开发个性化意图推理模型的必要性。我们使用高斯混合模型来标记基于单个用户的滚动行为的用户推送交互的不同阶段。使用每个用户的数据训练监督分类器,并使用这些模型来预测用户在不同推进活动中的意图。我们发现随机森林分类器在预测2名参与者的个人特定轮椅推进和用户意图的不同状态方面具有很高的准确性(>92%)。该框架计算效率高,可用于实时预测轮椅使用者的意图。该聚类分类管道的结果为设计特定用户和自适应PAPAW控制器提供了相关信息。
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