机器学习驱动的个性化步态康复:分类、预测和机制设计

Amol Loya, Shrinath Deshpande, A. Purwar
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引用次数: 0

摘要

人机交互机构的设计除了涉及运动学任务外,还涉及许多主观标准和约束。这对于康复设备尤其重要,因为其尺寸、复杂性、重量、成本和易用性是关键因素。大多数设计此类装置的方法都是基于有限自由度的机构,首先寻找任务路径的数值最优解,然后对可行的设计概念进行修剪。考虑到问题的高度非线性性质,这种方法丢弃了很大一部分数值上的次优解,如果从一开始就应用主题标准,这些解可能是实际的最优解。为了克服这一限制,在本文中,我们提出了一种端到端计算方法,用于开发一种用于个性化步态康复的设备,该设备使用机器学习技术,专注于步态分类、预测和专门的设备设计。这些模型产生了与目标路径变化分布密切相关的连锁机制分布。这种表述问题的方式产生了大量不同的解决方案,可以应用主观标准来产生实际有用的设计概念,否则使用传统的综合方法是不可能的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Driven Individualized Gait Rehabilitation: Classification, Prediction, and Mechanism Design
Design of mechanisms for human-machine interaction involves numerous subjective criteria and constraints in addition to the kinematic task. This is particularly important for the rehabilitation devices, where the size, complexity, weight, cost, and ease of use are critical factors. A large majority of the approaches towards the design of such devices, which are based on limited degree-of-freedom mechanisms start with finding numerically optimal solutions to the task path followed by pruning for feasible design concepts. Given the highly nonlinear nature of the problem, this approach discards a large proportion of numerically sub-optimal solutions, which could potentially be pragmatically optimal solutions if the subject criteria were applied from the start. To overcome this limitation, in this paper, we present an end-to-end computational approach for developing a device for individualized gait rehabilitation using machine learning techniques focusing on gait classification, prediction, and specialized device design. These models generate a distribution of linkage mechanisms, which strongly correlate to the distribution of target path variations. This way of formulating the problem results in a large variety of solutions to which subjective criteria can be applied to yield practically useful design concepts that would otherwise not be possible using traditional synthesis methods.
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