基于模式识别和小波变换的磁流变数据特征分析与去噪

Guangbo Dong, Jian Ma, G. Xie, Zeng-qi Sun
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引用次数: 0

摘要

MRS数据去噪是光谱MRS数据分析中的一个关键环节。本文提出了一种基于小波变换和模式识别技术的有效方法。根据MRS数据的特点,设计了新的小波基函数,并利用小波阈值对自由感应衰减(FID)数据进行去噪,获得了更好的MRS谱;在此基础上,对基于独立分量分析(ICA)和支持向量机(SVM)的MRS谱中某些癌症的特征进行了扩展。对比传统小波基函数的去噪效果,实验验证了采用ICA和新小波滤波集的特征提取方法具有更高、更好的性能。本研究的实验是在GE核磁共振装置获得的少量真实低信噪比数据集上进行的。实验结果表明,提出的去噪方法显著提高了特征提取效率
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Analysis and De-noising of MRS Data Based on Pattern Recognition and Wavelet Transform
De-noising the MRS data is a key processing in analysis of spectroscopy MRS data. This paper presents an effective method based on wavelet-transform and pattern recognition technologies. Upon the characteristics of MRS data, a new wavelet basis function was designed, and a de-noising method of free induction decay (FID) data using wavelet threshold to obtain better MRS spectrums was conduced; hence, the features of some cancers from MRS spectrums based on independent component analysis (ICA) and support vector machine (SVM) were extended. Comparing with the de-nosing effect using conventional wavelet basis functions, experiments were conducted to validate that the innovative feature extraction method employing ICA and a new wavelet filter set has higher and better performance. Experiments in this study were carried out on a small amount of real and low SNR dataset that obtained from the GE NMR device. The experimental results showed that the proposed de-nosing method improves its efficiency of feature extraction significantly
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