Li Yanjie, Al-Sarayreh Mahmoud, Irie Kenji, Hackell Deborah, Bourdot Graeme, Reis Marlon M, Ghamkhar Kioumars
AgResearch Ltd., Grasslands Research Centre, Palmerston North, New Zealand.
Red Fern Solutions Ltd, Christchurch, New Zealand.
Front Plant Sci. 2021 Jan 25;11:611622. doi: 10.3389/fpls.2020.611622. eCollection 2020.
Weeds can be major environmental and economic burdens in New Zealand. Traditional methods of weed control including manual and chemical approaches can be time consuming and costly. Some chemical herbicides may have negative environmental and human health impacts. One of the proposed important steps for providing alternatives to these traditional approaches is the automated identification and mapping of weeds. We used hyperspectral imaging data and machine learning to explore the possibility of fast, accurate and automated discrimination of weeds in pastures where ryegrass and clovers are the sown species. Hyperspectral images from two grasses ( [yellow bristle grass] and [wind grass]) and two broad leaf weed species ( [giant buttercup] and [Californian thistle]) were acquired and pre-processed using the standard normal variate method. We trained three classification models, namely partial least squares-discriminant analysis, support vector machine, and Multilayer Perceptron (MLP) using whole plant averaged (Av) spectra and superpixels (Sp) averaged spectra from each weed sample. All three classification models showed repeatable identification of four weeds using both Av and Sp spectra with a range of overall accuracy of 70-100%. However, MLP based on the Sp method produced the most reliable and robust prediction result (89.1% accuracy). Four significant spectral regions were found as highly informative for characterizing the four weed species and could form the basis for a rapid and efficient methodology for identifying weeds in ryegrass/clover pastures.
杂草在新西兰可能成为主要的环境和经济负担。包括人工和化学方法在内的传统杂草控制方法可能既耗时又昂贵。一些化学除草剂可能对环境和人类健康产生负面影响。为这些传统方法提供替代方案的一个重要提议步骤是杂草的自动识别和绘图。我们使用高光谱成像数据和机器学习来探索在以黑麦草和三叶草为播种物种的牧场中快速、准确且自动区分杂草的可能性。采集了两种禾本科杂草([黄狗尾草]和[风车草])以及两种阔叶杂草([大毛茛]和[加州刺菜蓟])的高光谱图像,并使用标准正态变量法进行预处理。我们使用来自每个杂草样本的全株平均(Av)光谱和超像素(Sp)平均光谱训练了三种分类模型,即偏最小二乘判别分析、支持向量机和多层感知器(MLP)。所有三种分类模型使用Av光谱和Sp光谱都能对四种杂草进行可重复识别,总体准确率在70% - 100%范围内。然而,基于Sp方法的MLP产生了最可靠和稳健的预测结果(准确率89.1%)。发现四个重要光谱区域对表征这四种杂草物种具有高度信息性,可为快速高效识别黑麦草/三叶草牧场中的杂草提供方法基础。