傅立叶变换红外光谱与机器学习相结合诊断玉米叶片病害

IF 2.7 3区 化学 Q2 CHEMISTRY, ANALYTICAL
Qinru Ni , Yehao Zuo , Zhaoxing Zhi , Youming Shi , Gang Liu , Quanhong Ou
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引用次数: 0

摘要

玉米是世界上最重要的农作物之一,但其产量和质量却常常受到叶片病害的影响。因此,及时准确地检测此类病害至关重要。在这项研究中,获得了受北方玉米叶枯病(NCLB)和灰色叶斑病(GLS)影响的叶片的傅立叶变换红外(FTIR)光谱(4000-400 cm-¹),以及作为对照的健康玉米叶片的光谱。然后开发了各种基于机器学习的分类模型,以便进行精确的疾病诊断。为减少冗余并提取相关光谱信息,采用了可变重要性投影(VIP)算法和随机跃迁(RF)方法进行特征选择。由此产生的光谱特征随后被用作分类模型的输入。在评估的 12 个模型中,VIP-KNN 模型表现最为出色。原始傅立叶变换红外光谱包含 1867 个数据点,而 VIP-KNN 模型仅使用 615 个关键数据点就实现了分类,准确率达 97.46%,灵敏度达 96.08%,精确度达 95.96%。这凸显了特征选择方法如何减轻了过拟合,并大大提高了模型的分类准确性。这项研究的结果凸显了傅立叶红外光谱与机器学习相结合有效诊断玉米叶片病害的潜力,这种检测方法的准确率很高,模型的平均准确率高达 93.41 %。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnosis of corn leaf diseases by FTIR spectroscopy combined with machine learning
Corn is among the world's most vital crops, yet its yield and quality are often compromised by leaf diseases. Timely and accurate detection of such diseases is thus crucial. In this study, Fourier-transform infrared (FTIR) spectra (4000–400 cm⁻¹) were obtained for leaves afflicted by northern corn leaf blight (NCLB) and gray leaf spot (GLS), alongside spectra from healthy corn leaves as controls. Various machine learning-based classification models were then developed to facilitate precise disease diagnosis. To reduce redundancy and extract pertinent spectral information, the variable importance projection (VIP) algorithm and random leapfrog (RF) method were employed for feature selection. The resulting spectral features were subsequently used as inputs for the classification models. Of the twelve models evaluated, the VIP-KNN model demonstrated the most exceptional performance. While the original FTIR spectrum comprised 1867 data points, the VIP-KNN model achieved classification using only 615 critical data points, delivering an accuracy of 97.46 %, sensitivity of 96.08 %, and precision of 95.96 %. This highlights how the feature selection approach mitigated overfitting and substantially enhanced the model's classification accuracy. The findings of this research underscore the potential of combining FTIR spectroscopy with machine learning for the effective diagnosis of corn leaf diseases, the accuracy of this detection method is high, and the average accuracy of the model is as high as 93.41 %.
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来源期刊
Vibrational Spectroscopy
Vibrational Spectroscopy 化学-分析化学
CiteScore
4.70
自引率
4.00%
发文量
103
审稿时长
52 days
期刊介绍: Vibrational Spectroscopy provides a vehicle for the publication of original research that focuses on vibrational spectroscopy. This covers infrared, near-infrared and Raman spectroscopies and publishes papers dealing with developments in applications, theory, techniques and instrumentation. The topics covered by the journal include: Sampling techniques, Vibrational spectroscopy coupled with separation techniques, Instrumentation (Fourier transform, conventional and laser based), Data manipulation, Spectra-structure correlation and group frequencies. The application areas covered include: Analytical chemistry, Bio-organic and bio-inorganic chemistry, Organic chemistry, Inorganic chemistry, Catalysis, Environmental science, Industrial chemistry, Materials science, Physical chemistry, Polymer science, Process control, Specialized problem solving.
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