CIRAD, UMR TETIS, 500 Rue J.-F. Breton, 34093 Montpellier Cedex 5, France.
Sensors (Basel). 2010;10(1):734-47. doi: 10.3390/s100100734. Epub 2010 Jan 20.
Fungal disease detection in perennial crops is a major issue in estate management and production. However, nowadays such diagnostics are long and difficult when only made from visual symptom observation, and very expensive and damaging when based on root or stem tissue chemical analysis. As an alternative, we propose in this study to evaluate the potential of hyperspectral reflectance data to help detecting the disease efficiently without destruction of tissues. This study focuses on the calibration of a statistical model of discrimination between several stages of Ganoderma attack on oil palm trees, based on field hyperspectral measurements at tree scale. Field protocol and measurements are first described. Then, combinations of pre-processing, partial least square regression and linear discriminant analysis are tested on about hundred samples to prove the efficiency of canopy reflectance in providing information about the plant sanitary status. A robust algorithm is thus derived, allowing classifying oil-palm in a 4-level typology, based on disease severity from healthy to critically sick stages, with a global performance close to 94%. Moreover, this model discriminates sick from healthy trees with a confidence level of almost 98%. Applications and further improvements of this experiment are finally discussed.
在多年生作物的真菌病检测是庄园管理和生产中的一个主要问题。然而,目前这种诊断方法如果仅基于视觉症状观察则耗时且困难,如果基于根或茎组织的化学分析则非常昂贵且具有破坏性。作为替代方案,我们在这项研究中提出评估高光谱反射率数据的潜力,以便在不破坏组织的情况下有效地帮助检测疾病。本研究重点是基于树尺度的田间高光谱测量,对几种蜜环菌攻击油棕树阶段的判别统计模型进行校准。首先描述了野外方案和测量。然后,对大约一百个样本进行了预处理、偏最小二乘回归和线性判别分析的组合测试,以证明冠层反射率在提供有关植物卫生状况信息方面的有效性。因此,得出了一种稳健的算法,能够根据疾病严重程度从健康到严重的 4 个级别对油棕进行分类,总体性能接近 94%。此外,该模型可以将患病树与健康树区分开来,置信水平接近 98%。最后讨论了该实验的应用和进一步改进。