Clinical gait analysis by neural networks: issues and experiences

M. Köhle, D. Merkl, J. Kastner
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引用次数: 80

Abstract

Clinical gait analysis is an area aimed at the provision of support for diagnoses and therapy considerations, the development of bio-feedback systems to train patients, and the recognition of effects of multiple diseases and still active compensation. The data recorded with ground reaction force measurement platforms is a convenient starting point for gait analysis. The authors argue in favor of using the raw data from such force platforms and apply artificial neural networks for gait malfunction identification. They discuss their latest results in this line of research by using a supervised learning rule. The employed classification approach is learning vector quantization which proved to be highly robust in the training process yielding a remarkably high recognition accuracy of gait patterns.
神经网络临床步态分析:问题与经验
临床步态分析是一个旨在为诊断和治疗考虑提供支持的领域,发展生物反馈系统来训练患者,以及识别多种疾病的影响和仍然积极的补偿。地面反作用力测量平台记录的数据为步态分析提供了方便的起点。作者主张使用这些力平台的原始数据,并应用人工神经网络进行步态故障识别。他们通过使用监督学习规则讨论了他们在这一研究领域的最新成果。所采用的分类方法是学习向量量化,在训练过程中被证明具有很强的鲁棒性,对步态模式的识别精度非常高。
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