首页> 外文OA文献 >CLASSIFICATION OF KNEE-JOINT VIBROARTHROGRAPHIC SIGNALS USING TIME-DOMAIN AND TIME-FREQUENCY DOMAIN FEATURES AND LEAST-SQUARES SUPPORT VECTOR MACHINE
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CLASSIFICATION OF KNEE-JOINT VIBROARTHROGRAPHIC SIGNALS USING TIME-DOMAIN AND TIME-FREQUENCY DOMAIN FEATURES AND LEAST-SQUARES SUPPORT VECTOR MACHINE

机译:利用时域和时频域特征和最小二乘支持向量机对关节关节影像学信号进行分类

摘要

Analysis of knee-joint vibration sounds, also known as vibroarthrographic (VAG) signals, could lead to a noninvasive clinical tool for early detection of knee-joint pathology. In this paper, we employed the wavelet matching pursuit (MP) decomposition and signal variability for time-frequency domain and time-domain analysis of VAG signals. The number of wavelet MP atoms and the number of significant turns detected with the fixed threshold from signal variability analysis were extracted as prominent features for the classification over the data set of 89 VAG signals. Compared with the Fisher linear discriminant analysis, the nonlinear least-squares support vector machine (LS-SVM) is able to achieve higher overall accuracy of 73.03%, and the area of 0.7307 under the receiver operating characteristic curve.
机译:膝关节振动声音的分析(也称为振动心电图(VAG)信号)可能会导致一种用于早期检测膝关节病理的非侵入性临床工具。在本文中,我们将小波匹配追踪(MP)分解和信号可变性用于VAG信号的时频域和时域分析。提取小波MP原子的数量和从信号变异性分析中以固定阈值检测到的有效匝数,作为对89个VAG信号数据集进行分类的突出特征。与Fisher线性判别分析相比,非线性最小二乘支持向量机(LS-SVM)可以实现更高的总体精度73.03%,并且在接收器工作特性曲线下的面积为0.7307。

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