Rating Iron Deficiency in Soybean Using Image Processing and Decision-Tree Based Models
The most efficient way of soybean (<i>Glycine max</i> (L.) Merrill) iron deficiency chlorosis (IDC) management is to select a tolerant cultivar suitable for the specific growing condition. These cultivars are selected by field experts based on IDC visual ratings. However, this visual rat...
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2020-12-01
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doaj-3f50afb17c72406ba50a27015a693f6a2020-12-19T00:05:39ZengMDPI AGRemote Sensing2072-42922020-12-01124143414310.3390/rs12244143Rating Iron Deficiency in Soybean Using Image Processing and Decision-Tree Based ModelsOveis Hassanijalilian0C. Igathinathane1Sreekala Bajwa2John Nowatzki3Department of Agricultural and Biosystems Engineering, North Dakota State University, 1221 Albrecht Boulevard, Fargo, ND 58102, USADepartment of Agricultural and Biosystems Engineering, North Dakota State University, 1221 Albrecht Boulevard, Fargo, ND 58102, USADepartment of Agricultural and Biosystems Engineering, North Dakota State University, 1221 Albrecht Boulevard, Fargo, ND 58102, USADepartment of Agricultural and Biosystems Engineering, North Dakota State University, 1221 Albrecht Boulevard, Fargo, ND 58102, USAThe most efficient way of soybean (<i>Glycine max</i> (L.) Merrill) iron deficiency chlorosis (IDC) management is to select a tolerant cultivar suitable for the specific growing condition. These cultivars are selected by field experts based on IDC visual ratings. However, this visual rating method is laborious, expensive, time-consuming, subjective, and impractical on larger scales. Therefore, a modern digital image-based method using tree-based machine learning classifier models for rating soybean IDC at plot-scale was developed. Data were collected from soybean IDC cultivar trial plots. Images were processed with MATLAB and corrected for light intensity by using a standard color board in the image. The three machine learning models used in this study were decision tree (DT), random forest (RF), and adaptive boosting (AdaBoost). Calculated indices from images, such as dark green color index (DGCI), canopy size, and pixel counts into DGCI ranges and IDC visual scoring were used as input and target variables to train these models. Metrics such as precision, recall, and f1-score were used to assess the performance of the classifier models. Among all three models, AdaBoost had the best performance (average f1-score = 0.75) followed by RF and DT the least. Therefore, a ready-to-use methodology of image processing with AdaBoost model for soybean IDC rating was recommended. The developed method can be easily adapted to smartphone applications or scaled-up using images from aerial platforms.https://www.mdpi.com/2072-4292/12/24/4143soybeaniron deficiency chlorosisimage processingmachine learningAdaBoostclassification |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Oveis Hassanijalilian C. Igathinathane Sreekala Bajwa John Nowatzki |
spellingShingle |
Oveis Hassanijalilian C. Igathinathane Sreekala Bajwa John Nowatzki Rating Iron Deficiency in Soybean Using Image Processing and Decision-Tree Based Models Remote Sensing soybean iron deficiency chlorosis image processing machine learning AdaBoost classification |
author_facet |
Oveis Hassanijalilian C. Igathinathane Sreekala Bajwa John Nowatzki |
author_sort |
Oveis Hassanijalilian |
title |
Rating Iron Deficiency in Soybean Using Image Processing and Decision-Tree Based Models |
title_short |
Rating Iron Deficiency in Soybean Using Image Processing and Decision-Tree Based Models |
title_full |
Rating Iron Deficiency in Soybean Using Image Processing and Decision-Tree Based Models |
title_fullStr |
Rating Iron Deficiency in Soybean Using Image Processing and Decision-Tree Based Models |
title_full_unstemmed |
Rating Iron Deficiency in Soybean Using Image Processing and Decision-Tree Based Models |
title_sort |
rating iron deficiency in soybean using image processing and decision-tree based models |
publisher |
MDPI AG |
series |
Remote Sensing |
issn |
2072-4292 |
publishDate |
2020-12-01 |
description |
The most efficient way of soybean (<i>Glycine max</i> (L.) Merrill) iron deficiency chlorosis (IDC) management is to select a tolerant cultivar suitable for the specific growing condition. These cultivars are selected by field experts based on IDC visual ratings. However, this visual rating method is laborious, expensive, time-consuming, subjective, and impractical on larger scales. Therefore, a modern digital image-based method using tree-based machine learning classifier models for rating soybean IDC at plot-scale was developed. Data were collected from soybean IDC cultivar trial plots. Images were processed with MATLAB and corrected for light intensity by using a standard color board in the image. The three machine learning models used in this study were decision tree (DT), random forest (RF), and adaptive boosting (AdaBoost). Calculated indices from images, such as dark green color index (DGCI), canopy size, and pixel counts into DGCI ranges and IDC visual scoring were used as input and target variables to train these models. Metrics such as precision, recall, and f1-score were used to assess the performance of the classifier models. Among all three models, AdaBoost had the best performance (average f1-score = 0.75) followed by RF and DT the least. Therefore, a ready-to-use methodology of image processing with AdaBoost model for soybean IDC rating was recommended. The developed method can be easily adapted to smartphone applications or scaled-up using images from aerial platforms. |
topic |
soybean iron deficiency chlorosis image processing machine learning AdaBoost classification |
url |
https://www.mdpi.com/2072-4292/12/24/4143 |
work_keys_str_mv |
AT oveishassanijalilian ratingirondeficiencyinsoybeanusingimageprocessinganddecisiontreebasedmodels AT cigathinathane ratingirondeficiencyinsoybeanusingimageprocessinganddecisiontreebasedmodels AT sreekalabajwa ratingirondeficiencyinsoybeanusingimageprocessinganddecisiontreebasedmodels AT johnnowatzki ratingirondeficiencyinsoybeanusingimageprocessinganddecisiontreebasedmodels |
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