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Knee Joint Vibration Signal Analysis with Matching Pursuit Decomposition and Dynamic Weighted Classifier Fusion

机译:匹配追踪分解与动态加权分类器融合的膝关节振动信号分析

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摘要

Analysis of knee joint vibration (VAG) signals can provide quantitative indices for detection of knee joint pathology at an early stage. In addition to the statistical features developed in the related previous studies, we extracted two separable features, that is, the number of atoms derived from the wavelet matching pursuit decomposition and the number of significant signal turns detected with the fixed threshold in the time domain. To perform a better classification over the data set of 89 VAG signals, we applied a novel classifier fusion system based on the dynamic weighted fusion (DWF) method to ameliorate the classification performance. For comparison, a single leastsquares support vector machine (LS-SVM) and the Bagging ensemble were used for the classification task as well. The results in terms of overall accuracy in percentage and area under the receiver operating characteristic curve obtained with the DWF-based classifier fusion method reached 88.76% and 0.9515, respectively, which demonstrated the effectiveness and superiority of the DWF method with two distinct features for the VAG signal analysis.
机译:膝关节振动(VAG)信号的分析可以为早期检测膝关节病理提供定量指标。除了先前相关研究中开发的统计特征外,我们还提取了两个可分离的特征,即从小波匹配追踪分解中得出的原子数和在时域中使用固定阈值检测到的有效信号匝数。为了对89个VAG信号的数据集执行更好的分类,我们应用了基于动态加权融合(DWF)方法的新型分类器融合系统,以改善分类性能。为了进行比较,也将单个最小二乘支持向量机(LS-SVM)和Bagging集成用于分类任务。基于DWF的分类器融合方法在接收器工作特性曲线下以百分比和面积表示的总精度方面的结果分别达到88.76%和0.9515,这证明了DWF方法具有两个明显特征的有效性和优越性。 VAG信号分析。

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