2023
DOI: 10.3390/rs15112758
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Predicting Dry Pea Maturity Using Machine Learning and Advanced Sensor Fusion with Unmanned Aerial Systems (UASs)

Aliasghar Bazrafkan,
Harry Navasca,
Jeong-Hwa Kim
et al.

Abstract: Maturity is an important trait in dry pea breeding programs, but the conventional process predominately used to measure this trait can be time-consuming, labor-intensive, and prone to errors. Therefore, a more efficient and accurate approach would be desirable to support dry pea breeding programs. This study presents a novel approach for measuring dry pea maturity using machine learning algorithms and unmanned aerial systems (UASs)-collected data. We evaluated the abilities of five machine learning algorithms … Show more

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Cited by 4 publications
(2 citation statements)
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“…KNN and RF parameters were optimized using a grid search. One of the strengths of KNN is its ability to handle multidimensional input data, making it a suitable candidate for this study. In the case of SVR, according to the Scikit-learn package documentation, a linear kernel was used because it is impractical to scale data sets with more than a few thousand samples since the fit time complexity is more than quadratic with the number of samples . In our case, we have more than 98,000 cases in the training set.…”
Section: Methodsmentioning
confidence: 99%
“…KNN and RF parameters were optimized using a grid search. One of the strengths of KNN is its ability to handle multidimensional input data, making it a suitable candidate for this study. In the case of SVR, according to the Scikit-learn package documentation, a linear kernel was used because it is impractical to scale data sets with more than a few thousand samples since the fit time complexity is more than quadratic with the number of samples . In our case, we have more than 98,000 cases in the training set.…”
Section: Methodsmentioning
confidence: 99%
“…To select the most efficient regression model in our case, we compared the predictive capabilities of commonly used machine learning algorithms for predicting SDR at the individual tree level, such as RF, PLSR, and SVM models. The RF model is an ensemble learning algorithm that involves the bagging of regression trees [48]. The SVM regression model is a typical branch of generalized linear regression model, which was adopted with a linear kernel in the present study [49].…”
Section: Prediction Modelmentioning
confidence: 99%