首页> 美国卫生研究院文献>Journal of Analytical Methods in Chemistry >Recognition of FT-IR Data Cuscutae Semen, Japanese Dodder, and Sinapis Semen Using Discrete Wavelet Transformation and RBF Networks
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Recognition of FT-IR Data Cuscutae Semen, Japanese Dodder, and Sinapis Semen Using Discrete Wavelet Transformation and RBF Networks

机译:离散小波变换和RBF网络识别FT-IR数据Cu草,日本Do丝和西纳皮斯精液

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摘要

Horizontal attenuation total reflection Fourier transformation infrared spectroscopy (HATR-FT-IR) studies on cuscutae semen and its confusable varieties Japanese dodder and sinapis semen combined with discrete wavelet transformation (DWT) and radial basis function (RBF) neural networks have been conducted in order to classify them. DWT is used to decompose the FT-IRs of cuscutae semen, Japanese dodder, and sinapis semen. Two main scales are selected as the feature extracting space in the DWT domain. According to the distribution of cuscutae semen, Japanese dodder, and sinapis semen's FT-IRs, three feature regions are determined at detail 3, and two feature regions are determined at detail 4 by selecting two scales in the DWT domain. Thus five feature parameters form the feature vector. The feature vector is input to the RBF neural networks to train so as to accurately classify the cuscutae semen, Japanese dodder, and sinapis semen. 120 sets of FT-IR data are used to train and test the proposed method, where 60 sets of data are used to train samples, and another 60 sets of FT-IR data are used to test samples. Experimental results show that the accurate recognition rate of cuscutae semen, Japanese dodder, and sinapis semen is average of 100.00%, 98.33%, and 100.00%, respectively, following the proposed method.
机译:按顺序进行了attenuation鱼精液及其易变品种的水平衰减全反射傅里叶变换红外光谱(HATR-FT-IR)研究,并结合离散小波变换(DWT)和径向基函数(RBF)神经网络对日本do鱼和中华sin精子进行了研究。对它们进行分类。 DWT用于分解草精液,日本do丝和中华se精液的FT-IR。选择两个主要尺度作为DWT域中的特征提取空间。根据of鱼精液,日本do丝和中华api精液的FT-IR分布,通过在DWT域中选择两个比例,在细节3处确定三个特征区域,在细节4处确定两个特征区域。因此,五个特征参数形成特征向量。将特征向量输入到RBF神经网络进行训练,以便准确地对草精液,日本do丝和中华sin精液进行分类。 120组FT-IR数据用于训练和测试所提出的方法,其中60组数据用于训练样本,另外60组FT-IR数据用于测试样本。实验结果表明,按照所提出的方法,鱼精液,日本do丝和中华sin精液的准确识别率分别为平均100.00%,98.33%和100.00%。

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