基于LDA和QDA的CL和RGB过滤检测小麦病害的新方法

Rajesh Kanna.R, V.Ulagamuthalvi
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引用次数: 0

摘要

小麦在任何地方都必不可少。小麦叶片病害阻碍生长。小麦叶片病害鉴定对小麦品质和农业生产具有重要意义。本文提出了一种改进小麦叶片病害识别的集成机器学习策略:线性判别分析的颜色布局滤波器、二次判别分析的颜色布局滤波器、线性判别分析的RGB滤波器和二次判别分析的RGB滤波器可以识别小麦叶片。农业自主叶片侵染检测系统采用图像处理、特征提取、选择和学习等技术。这项技术帮助农民快速、可靠地诊断植物病害。自动叶片病害检测加快作物诊断。本研究的线性判别分析颜色布局滤波器对小麦病害分类效果较好。LDA-CLF的准确率最高,为88.33%。QDA-RGBF准确率为80%。LDA为0.88的CLF是理想的。RGBF QDA精度为0.80,较差。LDA-CLF召回率0.88。具有QDA召回率的RGBF为0。S0、低。以0.66 kappa, CLF和LDA领先。具有QDA的RGBF kappa最低(0.49)。我们最好的模型是CLF的0.88 LDA F-Measure。qda增强RGBF的f值为0.80。LDA-CLF的MCC最高,为0.66。RGBF QDA MCC最低为0.5。0.93 clf - da roc。RGBF基于lda的ROC为0。S4。RGBF QDA模型的PRC最高(0.92)。RGBF-LDA的PRC最低(0.78)。基于线性判别分析的颜色布局过滤器在本研究中表现优于其他模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Detection on Wheat Disease through CL and RGB Filters by LDA and QDA
Wheat is essential everywhere. Wheat leaf diseases hinder growth. Wheat leaf disease identification is crucial to wheat quality and agriculture. This work presents an integrated machine learning strategy to improve wheat leaf disease identification: Colour Layout Filter with Linear Discriminant Analysis, Colour Layout Filter with Quadratic Discriminant Analysis, RGB Filter with Linear Discriminant Analysis and RGB Filter with Quadratic Discriminant Analysis can identify damaged wheat leaves. The agricultural autonomous leaf infection detection system uses images, processing, feature extraction, selection, and learning. This technology helps farmers quickly and reliably diagnose plant illnesses. Automatic leaf disease detection speeds crop diagnosis. This study’s Linear Discriminant Analysis Color Layout Filter classifies wheat diseases well. LDA-CLF is most accurate at 88.33%. QDA-RGBF has 80% accuracy. CLF with LDA 0.88 is ideal. RGBF QDA accuracy is 0.80, poor. LDA-CLF recalls 0.88. RGBF with QDA recall is 0. S0, low. With 0.66 kappa, CLF and LDA lead. RGBF with QDA has lowest kappa (0.49). Our best model is CLF’s0.88 LDA F-Measure. QDA-enhanced RGBF has 0.80 F-Measure. LDA-CLF has the highest MCC at 0.66. RGBF QDA MCC lowest is 0.5. 0.93 CLF-LDA ROC. RGBF’s LDA-based ROC is 0. S4. RGBF QDA models have the highest PRC (0.92). RGBF-LDA has the lowest PRC (0.78). Linear Discriminant Analysis-based Color Layout Filters outperformed other models in this study.
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