Sankaran Sindhuja, Ehsani Reza, Inch Sharon A, Ploetz Randy C
Citrus Research and Education Center, University of Florida, Lake Alfred 33850.
Tropical Research and Education Center, University of Florida, Homestead 33031.
Plant Dis. 2012 Nov;96(11):1683-1689. doi: 10.1094/PDIS-01-12-0030-RE.
Laurel wilt, caused by the fungus Raffaelea lauricola, affects the growth, development, and productivity of avocado, Persea americana. This study evaluated the potential of visible-near infrared spectroscopy for non-destructive sensing of this disease. The symptoms of laurel wilt are visually similar to those caused by freeze damage (leaf necrosis). In this work, we performed classification studies with visible-near infrared spectra of asymptomatic and symptomatic leaves from infected plants, as well as leaves from freeze-damaged and healthy plants, both of which were non-infected. The principal component scores computed from principal component analysis were used as input features in four classifiers: linear discriminant analysis, quadratic discriminant analysis (QDA), Naïve-Bayes classifier, and bagged decision trees (BDT). Among the classifiers, QDA and BDT resulted in classification accuracies of higher than 94% when classifying asymptomatic leaves from infected plants. All of the classifiers were able to discriminate symptomatic-infected leaves from freeze-damaged leaves. However, the false negatives mainly resulted from asymptomatic-infected leaves being classified as healthy. Analyses of average vegetation indices of freeze-damaged, healthy (non-infected), asymptomatic-infected, and symptomatic-infected leaves indicated that the normalized difference vegetation index and the simple ratio index were statistically different.
由真菌劳雷尔散斑壳(Raffaelea lauricola)引起的月桂枯萎病会影响鳄梨(Persea americana)的生长、发育和产量。本研究评估了可见 - 近红外光谱技术对这种病害进行无损检测的潜力。月桂枯萎病的症状在视觉上与冻害(叶片坏死)引起的症状相似。在这项工作中,我们对受感染植物的无症状和有症状叶片以及未受感染的冻害和健康植物的叶片的可见 - 近红外光谱进行了分类研究。从主成分分析计算得到的主成分得分被用作四个分类器的输入特征:线性判别分析、二次判别分析(QDA)、朴素贝叶斯分类器和袋装决策树(BDT)。在这些分类器中,当对受感染植物的无症状叶片进行分类时,QDA和BDT的分类准确率高于94%。所有分类器都能够区分有症状的感染叶片和冻害叶片。然而,假阴性主要是由于无症状感染叶片被分类为健康叶片。对冻害、健康(未感染)、无症状感染和有症状感染叶片的平均植被指数分析表明,归一化差异植被指数和简单比值指数在统计上存在差异。