Implementation of Machine Learning Classification Regarding Hemiplegic Gait Using an Assortment of Machine Learning Algorithms with Quantification from Conformal Wearable and Wireless Inertial Sensor System

R. LeMoyne, Timothy Mastroianni
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引用次数: 2

Abstract

The quantification of gait is uniquely facilitated through the conformal wearable and wireless inertial sensor system, which consists of a profile comparable to a bandage. These attributes advance the ability to quantify hemiplegic gait in consideration of the hemiplegic affected leg and unaffected leg. The recorded inertial sensor data, which is inclusive of the gyroscope signal, can be readily transmitted by wireless means to a secure Cloud. Incorporating Python to automate the post-processing of the gyroscope signal data can enable the development of a feature set suitable for a machine learning platform, such as the Waikato Environment for Knowledge Analysis (WEKA). An assortment of machine learning algorithms, such as the multilayer perceptron neural network, J48 decision tree, random forest, K-nearest neighbors, logistic regression, and naïve Bayes, were evaluated in terms of classification accuracy and time to develop the machine learning model. The K-nearest neighbors achieved optimal performance based on classification accuracy achieved for differentiating between the hemiplegic affected leg and unaffected leg for gait and the time to establish the machine learning model. The achievements of this research endeavor demonstrate the utility of amalgamating the conformal wearable and wireless inertial sensor with machine learning algorithms for distinguishing the hemiplegic affected leg and unaffected leg during gait. for characterizing the sagittal plane of the thighs during gait. The Y-direction gyroscope signal was the basis for composing the feature set for machine learning classification. The sampling rate of the BioStamp nPoint was set to 250 Hz.
利用保形可穿戴和无线惯性传感器系统量化的机器学习算法实现偏瘫步态的机器学习分类
通过保形可穿戴和无线惯性传感器系统,步态的量化是唯一方便的,该系统由一个类似绷带的轮廓组成。考虑到偏瘫的影响腿和未受影响的腿,这些属性提高了量化偏瘫步态的能力。记录的惯性传感器数据,包括陀螺仪信号,可以很容易地通过无线方式传输到一个安全的云。将Python集成到陀螺仪信号数据的自动后处理中,可以开发适合机器学习平台的功能集,例如Waikato Environment for Knowledge Analysis (WEKA)。各种机器学习算法,如多层感知器神经网络、J48决策树、随机森林、k近邻、逻辑回归和naïve贝叶斯,在分类精度和开发机器学习模型的时间方面进行了评估。基于区分偏瘫患腿和未患腿步态的分类精度和建立机器学习模型的时间,k近邻算法获得了最优性能。本研究的成果表明,将保形可穿戴和无线惯性传感器与机器学习算法相结合,可以在步态中区分偏瘫的影响腿和未影响腿。用于描述步态时大腿矢状面。y方向陀螺仪信号是构成机器学习分类特征集的基础。设置BioStamp nPoint的采样率为250hz。
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