Generalized and Efficient Skill Assessment from IMU Data with Applications in Gymnastics and Medical Training

Aftab Khan, Sebastian Mellor, R. King, Balazs Janko, W. Harwin, R. Sherratt, I. Craddock, T. Plötz
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引用次数: 5

Abstract

Human activity recognition is progressing from automatically determining what a person is doing and when, to additionally analyzing the quality of these activities—typically referred to as skill assessment. In this chapter, we propose a new framework for skill assessment that generalizes across application domains and can be deployed for near-real-time applications. It is based on the notion of repeatability of activities defining skill. The analysis is based on two subsequent classification steps that analyze (1) movements or activities and (2) their qualities, that is, the actual skills of a human performing them. The first classifier is trained in either a supervised or unsupervised manner and provides confidence scores, which are then used for assessing skills. We evaluate the proposed method in two scenarios: gymnastics and surgical skill training of medical students. We demonstrate both the overall effectiveness and efficiency of the generalized assessment method, especially compared to previous work.
基于IMU数据的广义高效技能评估及其在体操和医学训练中的应用
人类活动识别正在从自动确定一个人在做什么和什么时候,发展到分析这些活动的质量——通常被称为技能评估。在本章中,我们提出了一个新的技能评估框架,它可以跨应用领域进行推广,并可以部署到近实时的应用中。它基于定义技能的活动的可重复性的概念。分析基于两个后续的分类步骤,这两个步骤分析(1)动作或活动和(2)它们的质量,即人类执行这些动作或活动的实际技能。第一个分类器以监督或无监督的方式进行训练,并提供置信度分数,然后用于评估技能。我们在医学生体操和外科技能训练两种情况下评估了所提出的方法。我们证明了广义评估方法的总体有效性和效率,特别是与以前的工作相比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
10.30
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0.00%
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