首页> 外文会议>Computational Intelligence for Measurement Systems and Applications, 2009. CIMSA '09 >An adaptive classifier fusion method for analysis of knee-joint vibroarthrographic signals
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An adaptive classifier fusion method for analysis of knee-joint vibroarthrographic signals

机译:自适应分类器融合方法分析膝关节颤动信号

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Externally recorded knee-joint vibroarthrographic (VAG) signals bear diagnostic information related to degenerative conditions of cartilage disorders in a knee. In this paper, the number of atoms derived from wavelet matching pursuit (MP) decomposition and the parameter of turns count with the fixed threshold that characterizes the waveform variability of VAG signals were extracted for computer-aided analysis. A novel multiple classifier system (MCS) based on the adaptive weighted fusion (AWF) method is proposed for the classification of VAG signals. The experimental results shows that the proposed AWF-based MCS is able to provide the classification accuracy of 80.9%, and the area of 0.8674 under the receiver operating characteristic curve over the data set of 89 VAG signals. Such results are superior to those obtained with best component classifier in the form of least-squares support vector machine, and the popular Bagging ensemble method.
机译:外部记录的膝关节震动描记术(VAG)信号带有与膝关节软骨疾病的退化状况有关的诊断信息。本文提取了小波匹配追踪(MP)分解得到的原子数和具有固定阈值的圈数参数,该阈值表征了VAG信号的波形变异性,用于计算机辅助分析。提出了一种基于自适应加权融合(AWF)方法的新型多分类器系统(MCS),用于VAG信号的分类。实验结果表明,所提出的基于AWF的MCS能够在89个VAG信号的数据集上提供80.9%的分类精度,并且在接收器工作特性曲线下的面积为0.8674。这样的结果优于采用最小二乘支持向量机和最佳的Bagging集成法形式的最佳分类器获得的结果。

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