Citrus Canopy SPAD Prediction under Bordeaux Solution Coverage Based on Texture- and Spectral-Information Fusion

IF 3.3 2区 农林科学 Q1 AGRONOMY
Shunshun Ding, Juanli Jing, Shiqing Dou, Menglin Zhai, Wenjie Zhang
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引用次数: 0

Abstract

Rapid and nondestructive prediction of chlorophyll content and response to the growth of various crops using remote sensing technology is a prominent topic in agricultural remote sensing research. Bordeaux mixture has been extensively employed for managing citrus diseases, such as black star and ulcer disease. However, the presence of pesticide residues in Bordeaux mixture can significantly modify the spectral response of the citrus canopy, thereby exerting a substantial influence on the accurate prediction of agronomic indices in fruit trees. In this study, we used unmanned aerial vehicle (UAV) multispectral imaging technology to obtain remote sensing imagery of Bordeaux-covered citrus canopies during the months of July, September, and November. We integrated spectral and texture information to construct a high-dimensional feature dataset and performed data downscaling and feature optimization. Furthermore, we established four machine learning models, namely, partial least squares regression (PLS), ridge regression (RR), ridge, random forest (RF), and support vector regression (SVR). Our objectives were to identify the most effective prediction model for estimating the SPAD (soil plant analysis development) value of Bordeaux-covered citrus canopies, assess the variation in prediction accuracy between fused features and individual features, and investigate the impact of Bordeaux solution on the spectral reflectance of the citrus canopy. The results showed that (1) the impact of Bordeaux mixture on citrus canopy reflectance bands ranked from the highest to the lowest as follows: near-infrared band at 840 nm, red-edge band at 730 nm, blue band at 450 nm, green band at 560 nm, and red band at 650 nm. (2) Fused feature models had better prediction ability than single-feature modeling, with an average R2 value of 0.641 for the four model test sets, improving by 0.117 and 0.039, respectively, compared with single-TF (texture feature) and -VI (vegetation index) modeling, and the test-set root-mean-square error (RMSE) was 2.594 on average, which was 0.533 and 0.264 lower than single-TF and -VI modeling, respectively. (3) Multiperiod data fusion effectively enhanced the correlation between features and SPAD values and consequently improved model prediction accuracy. Compared with accuracy based on individual months, R improved by 0.013 and 0.011, while RMSE decreased by 0.112 and 0.305. (4) The SVR model demonstrated the best performance in predicting citrus canopy SPAD under Bordeaux solution coverage, with R2 values of 0.629 and 0.658, and RMSE values of 2.722 and 2.752 for the training and test sets, respectively.
基于纹理和光谱信息融合的波尔多溶液覆盖下柑橘冠层SPAD预测
利用遥感技术快速、无损地预测叶绿素含量及其对作物生长的响应是农业遥感研究的一个重要课题。波尔多混合液已被广泛应用于柑橘病害的防治,如黑星病和溃疡病。然而,波尔多混合物中农药残留的存在会显著改变柑橘冠层的光谱响应,从而对果树农艺指标的准确预测产生实质性影响。本研究采用无人机(UAV)多光谱成像技术,获取波尔多地区7月、9月和11月柑橘冠层的遥感影像。结合光谱和纹理信息构建高维特征数据集,并对数据进行降尺度和特征优化。此外,我们建立了四种机器学习模型,即偏最小二乘回归(PLS)、脊回归(RR)、脊回归、随机森林(RF)和支持向量回归(SVR)。我们的目标是确定最有效的预测模型来估计波尔多覆盖的柑橘冠层的SPAD(土壤植物分析发展)值,评估融合特征和单个特征之间的预测精度变化,并研究波尔多溶液对柑橘冠层光谱反射率的影响。结果表明:(1)波尔多混合剂对柑橘冠层反射率波段的影响从高到低依次为:近红外波段840 nm、红边波段730 nm、蓝边波段450 nm、绿边波段560 nm、红边波段650 nm。(2)融合特征模型的预测能力优于单一特征建模,4个模型测试集的平均R2值为0.641,比单一tf(纹理特征)和-VI(植被指数)建模分别提高0.117和0.039,测试集均方根误差(RMSE)平均为2.594,比单一tf和-VI建模分别低0.533和0.264。(3)多周期数据融合有效增强了特征与SPAD值之间的相关性,从而提高了模型预测精度。与基于单月的准确率相比,R提高了0.013和0.011,RMSE降低了0.112和0.305。(4) SVR模型对波尔多溶液覆盖下柑橘冠层SPAD的预测效果最好,训练集和测试集的R2分别为0.629和0.658,RMSE分别为2.722和2.752。
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来源期刊
Agriculture-Basel
Agriculture-Basel Agricultural and Biological Sciences-Food Science
CiteScore
4.90
自引率
13.90%
发文量
1793
审稿时长
11 weeks
期刊介绍: Agriculture (ISSN 2077-0472) is an international and cross-disciplinary scholarly and scientific open access journal on the science of cultivating the soil, growing, harvesting crops, and raising livestock. We will aim to look at production, processing, marketing and use of foods, fibers, plants and animals. The journal Agriculturewill publish reviews, regular research papers, communications and short notes, and there is no restriction on the length of the papers. Our aim is to encourage scientists to publish their experimental and theoretical research in as much detail as possible. Full experimental and/or methodical details must be provided for research articles.
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