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A Method of Honey Plant Classification Based on IR Spectrum: Extract Feature Wavelength Using Genetic Algorithm and Classify Using Linear Discriminate Analysis

机译:基于红外光谱的蜂蜜植物分类方法:利用遗传算法提取特征波长并利用线性判别分析进行分类

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Bayesian linear classifier is the basic scheme to solve model classification basing on statistics. Face with the classification of three different nectar plant, the near infrared spectrum data was acquired. The character of the near infrared spectrums is known as litter sample and higher dimension. In this paper, the method has developed to acquire the feature wavelength based on genetic algorithm. It can solve the problem of the effective information extraction from the high-dimensional data matrix. The fitness function of genetic algorithm is been set to minimize the error rate of classification. The K-S algorithm was used to construct the calibration set and validation set. There are 132 samples in the calibration set and 42 samples in the validation set. The feature wavelengths were acquired respectively basing on different preprocessing. The result indicates using the 10 feature wavelengths based on raw data can obtain best resolution compare with the principal component analysis -linear discriminate analysis model. The result indicated that the GA-LDA classifier can made the model to be simplified and the correction rate can be increased evidently after using the feature wavelength.
机译:贝叶斯线性分类器是解决基于统计的模型分类的基本方案。面对三种不同的花蜜植物的分类,获得了近红外光谱数据。近红外光谱的特征被称为垃圾样本和更高维度。本文提出了一种基于遗传算法的特征波长获取方法。它可以解决从高维数据矩阵中有效提取信息的问题。设置遗传算法的适应度函数以最小化分类的错误率。 K-S算法用于构建校准集和验证集。校准集中有132个样本,而验证集中有42个样本。基于不同的预处理分别获取特征波长。结果表明,与主成分分析-线性判别分析模型相比,使用基于原始数据的10个特征波长可以获得最佳分辨率。结果表明,使用特征波长后,GA-LDA分类器可以简化模型,提高校正率。

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