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Non-invasive Monitoring of Knee Pathology based on Automatic Knee Sound Classification

机译:基于自动膝关节分类的膝关节病理学非侵入性监测

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摘要

Knee joint sounds, generated during the active flexion and extension of the leg, represent acoustic signals caused by joint vibration and can be used as useful indicators of the roughness, softening, breakdown, or the state of lubrication of the articular cartilage surface. This paper describes an efficient algorithm in order to improve the classification accuracy of the features obtained from the time-frequency distribution (TFD) of normal and abnormal knee sounds. Knee sounds were correctly segmented by the dynamic time warping and the noise within the TFD of the segmented knee sounds was diminished by the singular value decomposition method. The classification of the knees as normal or abnormal was evaluated using a back-propagation neural network (BPNN). 1408 knee sound segments (normal 1031, abnormal 377) were used for evaluating our devised algorithm by a BPNN and, consequently, the mean accuracy was 91.4±1.7%. This algorithm could help to enhance the performance of the feature extraction and classification of knee sounds.
机译:膝关节声音,在活跃的屈曲和延伸期间产生的腿部,代表由关节振动引起的声学信号,可以用作粗糙度,软化,击穿或关节软骨表面的润滑状态的有用指标。本文介绍了一种有效的算法,以提高从正常和异常膝关节的时频分布(TFD)获得的特征的分类精度。通过动态时间翘曲正确地分割膝盖声音,并且分段膝关节的TFD内的噪声被奇异值分解方法减少。使用背部传播神经网络(BPNN)评估膝关节的分类作为正常或异常。 1408膝关节(正常1031,异常377)用于通过BPNN评估我们设计的算法,因此平均准确性为91.4±1.7%。该算法可以帮助提高特征提取的性能和膝关节的分类。

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