Classification of Maize Growth Stages Based on Phenotypic Traits and UAV Remote Sensing

Q2 Agricultural and Biological Sciences Agriculture Pub Date : 2024-07-18 DOI:10.3390/agriculture14071175
Yihan Yao, Jibo Yue, Yang Liu, Hao Yang, Haikuan Feng, Jianing Shen, Jingyu Hu, Qian Liu
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引用次数: 0

Abstract

Maize, an important cereal crop and crucial industrial material, is widely used in various fields, including food, feed, and industry. Maize is also a highly adaptable crop, capable of thriving under various climatic and soil conditions. Against the backdrop of intensified climate change, studying the classification of maize growth stages can aid in adjusting planting strategies to enhance yield and quality. Accurate classification of the growth stages of maize breeding materials is important for enhancing yield and quality in breeding endeavors. Traditional remote sensing-based crop growth stage classifications mainly rely on time series vegetation index (VI) analyses; however, VIs are prone to saturation under high-coverage conditions. Maize phenotypic traits at different growth stages may improve the accuracy of crop growth stage classifications. Therefore, we developed a method for classifying maize growth stages during the vegetative growth phase by combining maize phenotypic traits with different classification algorithms. First, we tested various VIs, texture features (TFs), and combinations of VI and TF as input features to estimate the leaf chlorophyll content (LCC), leaf area index (LAI), and fractional vegetation cover (FVC). We determined the optimal feature inputs and estimation methods and completed crop height (CH) extraction. Then, we tested different combinations of maize phenotypic traits as input variables to determine their accuracy in classifying growth stages and to identify the optimal combination and classification method. Finally, we compared the proposed method with traditional growth stage classification methods based on remote sensing VIs and machine learning models. The results indicate that (1) when the VI+TFs are used as input features, random forest regression (RFR) shows a good estimation performance for the LCC (R2: 0.920, RMSE: 3.655 SPAD units, MAE: 2.698 SPAD units), Gaussian process regression (GPR) performs well for the LAI (R2: 0.621, RMSE: 0.494, MAE: 0.397), and linear regression (LR) exhibits a good estimation performance for the FVC (R2: 0.777, RMSE: 0.051, MAE: 0.040); (2) when using the maize LCC, LAI, FVC, and CH phenotypic traits to classify maize growth stages, the random forest (RF) classification method achieved the highest accuracy (accuracy: 0.951, precision: 0.951, recall: 0.951, F1: 0.951); and (3) the effectiveness of the growth stage classification based on maize phenotypic traits outperforms that of traditional remote sensing-based crop growth stage classifications.
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基于表型特征和无人机遥感的玉米生长阶段分类
玉米是一种重要的谷类作物和重要的工业原料,被广泛应用于食品、饲料和工业等各个领域。玉米也是一种适应性很强的作物,能够在各种气候和土壤条件下茁壮成长。在气候变化加剧的背景下,研究玉米生长阶段的分类有助于调整种植策略,提高产量和质量。准确划分玉米育种材料的生长阶段对提高育种工作的产量和质量非常重要。传统的基于遥感的作物生长阶段分类主要依靠时间序列植被指数(VI)分析,但在高覆盖条件下,植被指数容易饱和。不同生长阶段的玉米表型特征可提高作物生长阶段分类的准确性。因此,我们通过将玉米表型特征与不同的分类算法相结合,开发了一种对玉米无性生长阶段进行分类的方法。首先,我们测试了各种VI、纹理特征(TF)以及VI和TF的组合作为输入特征来估计叶片叶绿素含量(LCC)、叶面积指数(LAI)和植被覆盖度(FVC)。我们确定了最佳特征输入和估算方法,并完成了作物高度(CH)提取。然后,我们测试了作为输入变量的玉米表型性状的不同组合,以确定它们在生长阶段分类中的准确性,并确定最佳组合和分类方法。最后,我们将所提出的方法与基于遥感 VI 和机器学习模型的传统生长阶段分类方法进行了比较。结果表明:(1) 当使用 VI+TF 作为输入特征时,随机森林回归(RFR)对 LCC 的估计性能良好(R2:0.920,RMSE:3.655 SPAD 单位,MAE:2.698 SPAD 单位),高斯过程回归(GPR)对 LAI 的估计性能良好(R2:0.621,RMSE:0.494,MAE:0.397),线性回归(LR)对 FVC 的估计性能良好(R2:0.777,RMSE:0.051,MAE:0.040);(2)利用玉米 LCC、LAI、FVC 和 CH 表型性状对玉米生长阶段进行分类时,随机森林(RF)分类方法的准确度最高(准确度:0.951,精确度:0.951,召回率:0.951,F1:0.951);(3)基于玉米表型性状的生长阶段分类的有效性优于传统的基于遥感的作物生长阶段分类。
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来源期刊
Agriculture
Agriculture Agricultural and Biological Sciences-Horticulture
CiteScore
1.90
自引率
0.00%
发文量
4
审稿时长
11 weeks
期刊介绍: The Agriculture (Poľnohospodárstvo) is a peer-reviewed international journal that publishes mainly original research papers. The journal examines various aspects of research and is devoted to the publication of papers dealing with the following subjects: plant nutrition, protection, breeding, genetics and biotechnology, quality of plant products, grassland, mountain agriculture and environment, soil science and conservation, mechanization and economics of plant production and other spheres of plant science. Journal is published 4 times per year.
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