Statistically Rigorous Human Movement Onset Detection with the Maximal Information Redundancy Criterion

G. Van Dijck, M. V. Van Hulle, J. Van Vaerenbergh
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引用次数: 6

Abstract

Stroke patients have a decreased ability in performing activity of daily living (ADL) tasks such as in "drinking a glass of water", "lifting a bag", "turning a key" and so on. Sensorimotor force and torque measurements from patients performing these standardized ADL tasks are hypothesized to give quantitative information about the recovery process. Parts of the force/torque measurements contain useful information, when related to the initiation of the movement during ADL tasks. Here we address the challenging problem of automatically extracting the movement initiation from these force/torque measurements. We will adopt a machine learning approach which relies on the statistically rigorous maximal information redundancy (MIR) criterion. This assumes that movement initiation parts of the signals are characterized by an increased redundancy in the signal. A thorough evaluation of the criterion shows that the accuracy of the criterion in movement onset detection is close to that of clinical experts
基于最大信息冗余准则的统计严谨人体运动起始检测
中风患者进行日常生活活动(ADL)任务的能力下降,如“喝一杯水”、“提一个袋子”、“转动钥匙”等。从执行这些标准化ADL任务的患者的感觉运动力和扭矩测量被假设为提供有关恢复过程的定量信息。部分力/扭矩测量包含有用的信息,当涉及到ADL任务期间的运动启动时。在这里,我们解决了从这些力/扭矩测量中自动提取运动起始的挑战性问题。我们将采用一种机器学习方法,它依赖于统计上严格的最大信息冗余(MIR)标准。这假设信号的运动启动部分的特征是信号中增加了冗余。对该标准的全面评价表明,该标准在运动发作检测中的准确性接近临床专家的水平
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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