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Wheat leaf rust detection at canopy scale under different LAI levels using machine learning techniques

机译:使用机器学习技术在不同的赖级冠层叶片射击射击探测

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Accurate diagnosis of wheat leaf rust is of high interest for precision farming. Spectral data have been increasingly employed to detect this disease at leaf or canopy scales; however, less attention has been paid to the variations of leaf area index (LAI). Therefore, in this study, identification of wheat leaf rust was investigated at canopy scale and under different LAI levels, namely high, medium and low. Four machine learning (ML) methods including v-support vector regression (v-SVR), boosted regression trees (BRT), random forests regression (RFR) and Gaussian process regression (GPR) were built to estimate disease severity (DS) levels at canopy scale, where the reflectance data were measured in field situ by using a spectroradiometer, in which records spectra from 350 to 2500 nm. Results showed that v-SVR outperformed the other ML methods at all three LAI levels with the R-2 measures all being around 0.99. The results, particularly, showed that the performances of the ML methods were improved with increasing LAI value, where RFR reported the worst R-2 value of 0.79 (RMSE = 8.5%) at low LAI level. The variable importance obtained using BRT showed three distinct regions of wavelengths that were appropriate across different LAI levels. The results of this research confirmed that hyperspectral signature can be reliably considered to identify wheat leaf rust disease at different LAI levels. Moreover, performances of several spectral vegetation indices (SVIs) were compared with those of the ML techniques. The results showed that the SVIs were consistently outperformed by the ML methods, particularly at low LAI level in which the SVIs were adversely affected. Nevertheless, all the SVIs, except for the RVSI, performed moderately well at high and medium LAI levels.
机译:精确诊断小麦叶锈病对精密养殖感兴趣。越来越多地使用光谱数据以在叶子或冠层鳞片上检测这种疾病;然而,叶面积指数(LAI)的变化已经少注意。因此,在本研究中,在冠层尺度和不同赖级水平下进行了麦片生锈的鉴定,即高,中低。包括V-Support向量回归(V-SVR),提升回归树(BRT),随机森林回归(RFR)和高斯过程回归(GPR)的四种机器学习方法是为了估计疾病严重程度(DS)水平通过使用光谱仪,在现场原位中测量反射数据的凝固量表,其中记录了350至2500nm的谱。结果表明,V-SVR在所有三种LAI水平上均为其他ML方法,R-2措施全部约为0.99。特别地,结果表明,随着LAI值的增加,提高了ML方法的性能,其中RFR报告了低LAI水平下最差的R-2值为0.79(RMSE = 8.5%)。使用BRT获得的可变重要性显示出在不同LAI水平上适当的三个不同的波长区域。该研究的结果证实,可以可靠地考虑高光谱签名以识别不同赖水平的小麦叶锈病。此外,将几种光谱植被索引(SVIS)的性能与M1技术的性能进行了比较。结果表明,SVIS通过ML方法始终如一,特别是在低LAI水平,其中SVIS不利影响。然而,除了RVSI之外的所有SVIS都在高中和中赖水平中表现正常。

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