Comparison of neural network and k-NN classification methods in medical image and voice recognitions.

E. K. Kim, J. T. Wu, S. Tamura, R. Close, H. Taketan, H. Kawai, M. Inoue, K. Ono
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引用次数: 2

Abstract

We make a comparison of classification ability between BPN (Back Propagation Neural Network) and k-NN (k-Nearest Neighbor) classification methods. Voice data and patellar subluxation images are used. The result was that the average recognition rate of BPN was 9.2 percent higher than that of the k-NN classification method. Although k-NN classification is simple in theory, classification time was fairly long. Therefore, it seems that real time recognition is difficult. On the other hand, the BPN method is long in learning time but is very short in recognition time. Especially if the number of dimensions of the samples is large, it can be said that BPN is better than k-NN in classification ability.
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神经网络和k-NN分类方法在医学图像和语音识别中的比较。
我们比较了BPN(反向传播神经网络)和k-NN (k-最近邻)分类方法的分类能力。使用语音数据和髌骨半脱位图像。结果表明,BPN的平均识别率比k-NN分类方法高出9.2%。k-NN分类虽然理论上简单,但分类时间相当长。因此,实时识别似乎是困难的。另一方面,BPN方法学习时间长,而识别时间短。特别是当样本的维数较大时,可以说BPN在分类能力上优于k-NN。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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