基于射频信号和KNN规则的特征选择在微栓子分类中的应用

K. Ferroudji, N. Benoudjit, M. Bahaz, A. Bouakaz
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引用次数: 10

摘要

在人体内,栓子会造成严重的损害,如中风或心脏病发作。常用的多普勒检测技术在确定栓子性质方面显示出其局限性。另一种方法是检测射频(RF)信号,而不是多普勒信号。在超声激励波的特定条件下,气体气泡表现出非线性行为,用于区分气态和固体微栓子。输入参数选择基频和次谐波信号的幅值和带宽。此外,基频和次谐波谱分量用高斯函数逼近。本文提出了一种基于k近邻规则(KNNR)的特征选择方法。该方法是一种有效的分类改进方法。特征选择和提取不仅表明有很好的能力找到最相关的输入集,从而提高分类精度,而且还可以减小特征向量的大小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature selection based on RF signals and KNN Rule: Application to microemboli classification
In the human body, emboli can produce severe damage like stroke or heart attack. Commonly used Doppler detection techniques have shown their limits in the determination of the embolus nature. An alternative approach would be to examine Radio Frequency (RF) signal instead of Doppler signals. Under specific conditions of the ultrasound excitation wave, gaseous bubbles show a nonlinear behavior exploited to distinguish gaseous from solid microemboli. Fundamental and second harmonic signals amplitudes and bandwidths are selected for input parameters. Moreover, fundamental and second harmonic spectral components have been approximated by Gaussian functions. In this paper, we propose a new approach for feature selection based on the K-Nearest Neighbors Rule (KNNR). The technique proved an effective improving classification. Feature selection and extraction not only indicate a good ability to find the most relevant set of inputs that result in higher classification accuracy but also to reduce the size of feature vector.
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