Maturity Prediction in Soybean Breeding Using Aerial Images and the Random Forest Machine Learning Algorithm

被引:0
|
作者
Perez, Osvaldo [1 ,2 ]
Diers, Brian [1 ]
Martin, Nicolas [1 ]
机构
[1] Univ Illinois, Dept Crop Sci, Urbana, IL 61801 USA
[2] Inst Nacl Invest Agr INIA, Estn Expt INIA Estanzuela, Ruta 50 km 11, Colonia 70000, Uruguay
关键词
agriculture; plant breeding; high-throughput phenotyping; UAV; physiological maturity; vegetation indices; machine learning; SEED YIELD; SENESCENCE; FEATURES;
D O I
10.3390/rs16234343
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Several studies have used aerial images to predict physiological maturity (R8 stage) in soybeans (Glycine max (L.) Merr.). However, information for making predictions in the current growing season using models fitted in previous years is still necessary. Using the Random Forest machine learning algorithm and time series of RGB (red, green, blue) and multispectral images taken from a drone, this work aimed to study, in three breeding experiments of plant rows, how maturity predictions are impacted by a number of factors. These include the type of camera used, the number and time between flights, and whether models fitted with data obtained in one or more environments can be used to make accurate predictions in an independent environment. Applying principal component analysis (PCA), it was found that compared to the full set of 8-10 flights (R-2 = 0.91-0.94; RMSE = 1.8-1.3 days), using data from three to five fights before harvest had almost no effect on the prediction error (RMSE increase similar to 0.1 days). Similar prediction accuracy was achieved using either a multispectral or an affordable RGB camera, and the excess green index (ExG) was found to be the important feature in making predictions. Using a model trained with data from two previous years and using fielding notes from check cultivars planted in the test season, the R8 stage was predicted, in 2020, with an error of 2.1 days. Periodically adjusted models could help soybean breeding programs save time when characterizing the cycle length of thousands of plant rows each season.
引用
收藏
页数:27
相关论文
共 50 条
  • [31] Improved Accuracy in Heart Disease Prediction using Novel Random Forest Algorithm in Comparison with Support Vector Machine Algorithm
    Poojitha, T.
    Mahaveerakannan, R.
    CARDIOMETRY, 2022, (25): : 1546 - 1553
  • [32] Performance Analysis of Placement prediction system using Support Vector Machine over Random Forest Algorithm
    Kumar, Konanki Vinay
    Malathi, P.
    Ramesh, Sindhu
    2022 14TH INTERNATIONAL CONFERENCE ON MATHEMATICS, ACTUARIAL SCIENCE, COMPUTER SCIENCE AND STATISTICS (MACS), 2022,
  • [33] Prediction of Aptamer Protein Interaction Using Random Forest Algorithm
    Manju, N.
    Samiha, C. M.
    Kumar, S. P. Pavan
    Gururaj, H. L.
    Flammini, Francesco
    IEEE ACCESS, 2022, 10 : 49677 - 49687
  • [34] Prediction of PKCθ Inhibitory Activity Using the Random Forest Algorithm
    Hao, Ming
    Li, Yan
    Wang, Yonghua
    Zhang, Shuwei
    INTERNATIONAL JOURNAL OF MOLECULAR SCIENCES, 2010, 11 (09) : 3413 - 3433
  • [35] Accurate prediction of sugarcane yield using a random forest algorithm
    Yvette Everingham
    Justin Sexton
    Danielle Skocaj
    Geoff Inman-Bamber
    Agronomy for Sustainable Development, 2016, 36
  • [36] Software maintainability prediction using an enhanced random forest algorithm
    Gupta, Shikha
    Chug, Anuradha
    JOURNAL OF DISCRETE MATHEMATICAL SCIENCES & CRYPTOGRAPHY, 2020, 23 (02): : 441 - 449
  • [37] Accurate prediction of sugarcane yield using a random forest algorithm
    Everingham, Yvette
    Sexton, Justin
    Skocaj, Danielle
    Inman-Bamber, Geoff
    AGRONOMY FOR SUSTAINABLE DEVELOPMENT, 2016, 36 (02)
  • [38] Prediction of Permeability Using Random Forest and Genetic Algorithm Model
    Wang, Junhui
    Yan, Wanzi
    Wan, Zhijun
    Wang, Yi
    Lv, Jiakun
    Zhou, Aiping
    CMES-COMPUTER MODELING IN ENGINEERING & SCIENCES, 2020, 125 (03): : 1135 - 1157
  • [39] Estimation of Soybean Yield by Combining Maturity Group Information and Unmanned Aerial Vehicle Multi-Sensor Data Using Machine Learning
    Ren, Pengting
    Li, Heli
    Han, Shaoyu
    Chen, Riqiang
    Yang, Guijun
    Yang, Hao
    Feng, Haikuan
    Zhao, Chunjiang
    REMOTE SENSING, 2023, 15 (17)
  • [40] Process parameters based machine learning model for bead profile prediction in activated TIG Welding using random forest machine learning
    Munghate, Abhinav Arun
    Thapliyal, Shivraman
    PROCEEDINGS OF THE INSTITUTION OF MECHANICAL ENGINEERS PART B-JOURNAL OF ENGINEERING MANUFACTURE, 2024, 238 (12) : 1761 - 1768