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Study on early rice blast diagnosis based on unpre-processed Raman spectral data

机译:基于UNPRE-加工拉曼光谱数据的早稻爆炸诊断研究

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Traditionally, the rice blast is diagnosed with the naked-eyes. There is an urgent need to provide a method that can identify the early rice blast without symptoms. In the paper, a method for the early rice blast diagnosis based on the Raman spectroscopy was proposed. Considering the compositions of the biological sample are complex, characteristic peaks are severely crossed, the biological fluorescence background and the noise are strong, and the Raman signal is weak. Different data pre-processing methods will lead to different diagnostic accuracies of Raman models, especially for biological samples. This paper proposed a method for modeling a Raman model based on data without pre-processing. In this method, the raw data are decomposed with Empirical Mode Decomposition (EMD) into several Intrinsic Mode Functions (IMF). Then, based on the self-correlation coefficient of the IMFs and the times of the IMFs crossing the zero Raman Intensity line, IMFs are filtered to get the signal components. Taking the characteristic peaks of the beta-carotene, the chlorophyll, and the chitin as the initial characteristic variables, the characteristic variables of the signal components were screened based on Successive Projections Algorithm (SPA). Finally, the obtained characteristic variables were used to establish a Partial Least Squares (PLS) regression model for the rice blast classification, and the test classification accuracy was 94.12%, which was higher than that of models based on spectral data pre-processed by Moving Average Smoothing + Baseline offset, Savitzky Golay Smoothing + Baseline offset, Gaussian Filter Smoothing + Baseline offset and the dB5 wavelet, 3-layer decomposition, Stein Unbiased Risk Estimate, the modulus maximum value method +7 points, 3rd-order Polynomial Fitting. (C) 2020 Elsevier B.V. All rights reserved.
机译:传统上,稻瘟病患者被裸眼被诊断出来。迫切需要提供一种可以识别早期稻瘟病的方法,没有症状。本文提出了一种基于拉曼光谱的早期稻瘟病诊断方法。考虑到生物样品的组合物是复杂的,特征峰严重交叉,生物荧光背景和噪声强,拉曼信号较弱。不同的数据预处理方法将导致拉曼模型的不同诊断准确性,特别是对于生物样品。本文提出了一种基于数据建模拉曼模型的方法,无需预处理。在此方法中,原始数据用经验模式分解(EMD)分解成几个内在模式功能(IMF)。然后,基于IMF的自相关系数和交叉零拉曼强度线的IMF的时间,滤波IMF以获得信号分量。以β-胡萝卜素,叶绿素和甲壳素的特征峰作为初始特征变量,基于连续投影算法(SPA)筛选信号分量的特征变量。最后,使用所获得的特征变量来建立用于稻瘟病分类的局部最小二乘(PLS)回归模型,测试分类精度为94.12%,高于通过移动预处理的光谱数据的模型的最小值94.12%平均平滑+基线偏移,Savitzky Golay平滑+基线偏移,高斯滤波器平滑+基线偏移和DB5小波,3层分解,斯坦因风险估计,模量最大值方法+7点,3级多项式拟合。 (c)2020 Elsevier B.v.保留所有权利。

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