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Categorization of functional impairments in human locomotion using the methods of the fusion of multiple sensors and computational intelligence .

机译:使用多种传感器和计算智能融合的方法对人类运动中的功能障碍进行分类。

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摘要

The main aim of this dissertation work was to develop an intelligent system to monitor, quantify and differentiate variances in human gait with high reliability and efficiency using the fusion of multiple sensor data and the methods of fuzzy inferential logic.;Gait disorders are heterogeneous and produce disabilities that vary substantially from individual to individual. The recognition, quantification and analysis of gait dysfunction is complex and, requires the integration of large amounts of data across multiple domains (kinetic, kinematic and electromyographic). Current systems for gait analysis generally require space and complex imaging equipment, as well as prolonged processing time, rendering them unsuitable for real-time applications. Quantitative gait analysis has been used to elucidate characteristic features of neurological gait disturbances. Although a number of studies have compared single patient groups with controls, there are only a few studies comparing gait parameters between patients with different neurological disorders.;This dissertation work is based on the hypothesis that functional rehabilitation can be most effectively achieved through the reduction of variances from normal patterns through training and other compensatory strategies, hence, efficient and reliable detection, quantification and differentiation of these variances is a critical link between diagnosis and optimal recovery. Current clinical methods of gait analysis are time and labor intensive and involve extensive posthoc data analysis. These limitations reduce access to gait analysis and exclude direct application of the patient's gait data to rehabilitative interventions in real-time.;The goal of the dissertation work was to develop a novel intelligent system to monitor, quantify and differentiate variances in human gait with high reliability and efficiency using the fusion of multiple sensor data and the methods of fuzzy inferential logic.;Applications of this innovative technology will include improved recognition of complex patterns related to variable and combined pathophysiologic factors, and reliable quantitative monitoring of gait-related disability with recovery or therapeutic intervention over time.
机译:本论文的主要目的是开发一种智能系统,通过融合多个传感器数据和模糊推理逻辑方法,以高可靠性和高效率来监测,量化和区分人的步态差异。残障因人而异。步态功能障碍的识别,量化和分析非常复杂,并且需要跨多个域(运动,运动学和肌电图)整合大量数据。当前用于步态分析的系统通常需要空间和复杂的成像设备,并且需要较长的处理时间,这使其不适用于实时应用。定量步态分析已用于阐明神经性步态障碍的特征。尽管许多研究将单个患者组与对照组进行了比较,但只有少数研究比较了不同神经系统疾病患者之间的步态参数。本论文基于以下假设,即通过减少脑瘫可以最有效地实现功能康复通过训练和其他补偿策略偏离正常模式的差异,因此,有效,可靠地检测,量化和区分这些差异是诊断和最佳恢复之间的关键环节。当前的步态分析临床方法费时费力,并且涉及大量事后数据分析。这些局限性减少了步态分析的机会,并排除了将患者的步态数据直接实时应用于康复干预的可能性。论文工作的目标是开发一种新型的智能系统,以监测,量化和区分高步态下人的步态变化。通过融合多个传感器数据和模糊推理逻辑方法来提高可靠性和效率。这项创新技术的应用将包括改善对与可变和综合病理生理因素有关的复杂模式的识别,以及对与步态相关的残疾进行可靠定量监测和恢复或随着时间的推移进行治疗性干预。

著录项

  • 作者

    Yu, Huiying.;

  • 作者单位

    The University of Texas at El Paso.;

  • 授予单位 The University of Texas at El Paso.;
  • 学科 Engineering Biomedical.;Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 383 p.
  • 总页数 383
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 语言学;
  • 关键词

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