Hyperspectral Estimation of Apple Canopy Chlorophyll Content Using an Ensemble Learning Approach

التفاصيل البيبلوغرافية
العنوان: Hyperspectral Estimation of Apple Canopy Chlorophyll Content Using an Ensemble Learning Approach
المؤلفون: Yuanmao Jiang, Jingling Xiong, Yufeng Peng, Yingqiang Song, Ruiyang Yu, Guijun Yang, Zhenhai Li, Xicun Zhu, Xueyuan Bai
المصدر: Applied Engineering in Agriculture. 37:505-511
بيانات النشر: American Society of Agricultural and Biological Engineers (ASABE), 2021.
سنة النشر: 2021
مصطلحات موضوعية: Canopy, Chlorophyll content, General Engineering, Hyperspectral imaging, Environmental science, Ensemble learning, Remote sensing
الوصف: HighlightsMonitored the canopy chlorophyll content of apple trees using hyperspectral reflectance information.Constructed support vector machine combination regression model (C-SVR) based on five-fold cross validation and support vector machine regression approach.Compared estimation accuracy of ensemble learning models (C-SVR, RF), machine learning models (SVR, ANN), and PLSR models for apple canopy chlorophyll content.Abstract. Rapidly and effective monitoring of the canopy chlorophyll content (CCC) of apple trees is of great significance for crop stress monitoring in precision agriculture. This study attempted to use hyperspectral vegetation indices (VIs) to estimate the CCC of apple trees based on ensemble learning approach. In this study, vegetation indices combined by any two wavelengths from 400 to 1100 nm were constructed to calculate the correlation coefficient with the CCC in apple. We constructed a partial least squares regression model (PLSR), artificial neural network regression model (ANN), support vector machine regression (SVR), random forest regression (RF) model and support vector machine combination regression model (C-SVR) based on combinations of VIs to improve the estimation accuracy in apple CCC. The results showed that the correlation coefficients between NDVI (949,695), OSAVI (828,705), RDVI (741,725), RVI (716,707), DVI (572,532), and apple CCC were all above 0.76. The CCC estimation model using the RF and C-SVR approach constructed by the NDVI (949,695), OSAVI (828,705), RDVI (741,725), RVI (716,707), and DVI (572,532) achieved the better estimation results, and the R2V, RMSEV, and RPDV values of models were 0.76, 0.131(mg . g-1), 2.04 and 0.78, 0.127(mg . g-1), 2.12, respectively. Compared with the PLSR, ANN, and SVR model, the R2V and RPDV values of C-SVR model were increased by 4%, 1.2%, 3.8%, and 5.0%, 28.4%, 7.1%, respectively. The results show that using C-SVR approach to estimating the apple CCC can realize high accuracy of quantitative estimation. Ensemble learning approach is an effective method for monitoring the nutrient status of fruit trees based on hyperspectral technique. Keywords: Apple tree canopy, Chlorophyll content, Crop stress monitoring, Ensemble learning, Hyperspectral, Vegetation index.
تدمد: 1943-7838
URL الوصول: https://explore.openaire.eu/search/publication?articleId=doi_________::d27b6a6d74e5dc54c17314de84185c07
https://doi.org/10.13031/aea.13935
رقم الأكسشن: edsair.doi...........d27b6a6d74e5dc54c17314de84185c07
قاعدة البيانات: OpenAIRE