College of Life Information Science & Instrument Engineering, Hangzhou Dianzi University, Hangzhou, China.
United States Department of Agriculture, Crop Production Systems Research Unit, Agricultural Research Service, Stoneville, MS, USA.
Pest Manag Sci. 2019 Dec;75(12):3260-3272. doi: 10.1002/ps.5448. Epub 2019 May 30.
Dicamba effectively controls several broadleaf weeds. The off-target drift of dicamba spray or vapor drift can cause severe injury to susceptible crops, including non-dicamba-tolerant crops. In a field experiment, advanced hyperspectral imaging (HSI) was used to study the spectral response of soybean plants to different dicamba rates, and appropriate spectral features and models for assessing the crop damage from dicamba were developed.
In an experiment with six different dicamba rates, an ordinal spectral variation pattern was observed at both 1 week after treatment (WAT) and 3 WAT. The soybean receiving a dicamba rate ≥0.2X exhibited unrecoverable damage. Two recoverability spectral indices (HDRI and HDNI) were developed based on three optimal wavebands. Based on the Jeffries-Matusita distance metric, Spearman correlation analysis and independent t-test for sensitivity to dicamba spray rates, a number of wavebands and classic spectral features were extracted. The models for quantifying dicamba spray levels were established using the machine learning algorithms of naive Bayes, random forest and support vector machine.
The spectral response of soybean injury caused by dicamba sprays can be clearly captured by HSI. The recoverability spectral indices developed were able to accurately differentiate the recoverable and unrecoverable damage, with an overall accuracy (OA) higher than 90%. The optimal spectral feature sets were identified for characterizing dicamba spray rates under recoverable and unrecoverable situations. The spectral features plus plant height can yield relatively high accuracy under the recoverable situation (OA = 94%). These results can be of practical importance in weed management. © 2019 Society of Chemical Industry.
麦草畏能有效防治多种阔叶杂草。麦草畏喷雾或蒸气飘移到敏感作物上,会导致作物,包括非麦草畏耐受作物,受到严重伤害。在田间试验中,先进的高光谱成像(HSI)被用于研究大豆植株对不同麦草畏用量的光谱响应,并开发了用于评估麦草畏对作物伤害的适当光谱特征和模型。
在 6 种不同麦草畏用量的试验中,在施药后 1 周(WAT)和 3 周(WAT)均观察到有序的光谱变化模式。麦草畏用量≥0.2X 的大豆表现出不可恢复的伤害。基于 3 个最佳波段,开发了两个恢复性光谱指数(HDRI 和 HDNI)。基于 Jeffries-Matusita 距离度量、Spearman 相关分析和对麦草畏喷雾率的敏感性的独立 t 检验,提取了一些波段和经典光谱特征。使用朴素贝叶斯、随机森林和支持向量机等机器学习算法建立了定量麦草畏喷雾水平的模型。
高光谱成像能清晰地捕捉到大豆受麦草畏喷雾伤害的光谱响应。开发的恢复性光谱指数能够准确区分可恢复和不可恢复的伤害,整体准确率(OA)高于 90%。确定了可恢复和不可恢复情况下,用于表征麦草畏喷雾率的最佳光谱特征集。在可恢复情况下,光谱特征加株高可以获得较高的准确率(OA=94%)。这些结果在杂草管理中具有实际意义。 © 2019 英国化学学会。