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Research on TCM pulse condition identification using probabilistic neural networks

机译:基于概率神经网络的中医脉象识别研究

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The key of objectivity of traditional Chinese Medicine (TCM) pulse condition lies on the objective test and correct recognition for all kinds of pulse conditions. In view of the ambiguity, variety and complexity of TCM pulse conditions, and the shortcomings of the traditional recognition methods and back propagation (BP) neural network method, a kind of TCM pulse-condition recognition method based on probabilistic neural networks (PNN) is put forward. In this research three experienced practitioners of Xi'an TCM Hospital gave us their expert advice and determined the percentage of correct recognition of our PNN method. For the twelve kinds of TCM pulse conditions, we attained an average recognition accuracy of about 93% with PNN method, better than the average recognition accuracy of about 75% attained with the traditional fuzzy cluster method and 87.1% with BP neural network method. The contrastive experiments of the BP neural network method and the PNN method are given. The results show that recognition accuracy of PNN method is out and away higher than that of BP neural network method in high noise circumstances.
机译:中医脉象客观性的关键在于对各种脉象的客观检验和正确识别。鉴于中医脉象条件的模糊性,多样性和复杂性,以及传统识别方法和BP神经网络方法的不足,提出了一种基于概率神经网络的中医脉象识别方法。提出。在这项研究中,西安市中医院的三名经验丰富的从业人员向我们提供了专家意见,并确定了正确识别我们的PNN方法的百分比。对于十二种中医脉象,PNN方法的平均识别准确率约为93%,优于传统的模糊聚类方法的平均识别准确度和BP神经网络方法的平均识别准确率分别为约75%和87.1%。给出了BP神经网络方法和PNN方法的对比实验。结果表明,在高噪声环境下,PNN方法的识别精度远高于BP神经网络方法。

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