从肌电图分类模型认识下肢病理

Emilia Abigail Meza P, María Fernanda Trujillo G, A. Acosta
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引用次数: 2

摘要

本文提出了一种用于研究健康人与下肢某些病变患者的表面肌电图关系的工具。由于支持向量机模型对过拟合具有较强的鲁棒性,因此采用支持向量机对肌电信号进行分类。对于下肢,分析采用了UCI机器学习[1]的肌电信号数据集。该数据库包含来自11名膝关节异常和11名正常受试者的信号,之前由专业人士诊断。他们通过三种运动来分析与下肢、步态、从坐姿伸腿和腿向上弯曲相关的行为。分析分为预处理、特征提取、训练和验证4个阶段。采用几种常规肌电特征与增强特征相结合进行性能比较。基于不同核数算法得到的结果,MATLAB®Classification Learner app提供的支持向量机模型准确率最高,达到96.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognizing Lower Limb Pathology Thought An EMG Classification Model
This paper proposes a tool for studying the relationship of surface electromyography between healthy people and someone with some pathology in the lower limb. Support Vector Machine SVM is used to classify electro myographic signals because models are robust to overfitting. For the lower limb, analysis has been taken the EMG Dataset from UCI Machine Learning [1]. This database contains signals from 11 subj ects with knee abnormality and 11 normally, previously diagnosed by a professional. They undergo three movements to analyze the behavior associated with the lower limb, gait, leg extension from a sitting position, and flexion of the leg up. Analysis was divided into 4 stages: preprocessing, features extraction, training, and validation. Several conventional electromyography features are used in performance comparison with it combined with Enhanced features. Based on results obtained by algorithms with different Kernel the Support Vector Machine model provided by MATLAB® Classification Learner app achieves the highest accuracy of 96.7%.
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