2017
DOI: 10.1186/s40965-017-0033-4
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Open source R for applying machine learning to RPAS remote sensing images

Abstract: The increase in the number of remote sensing platforms, ranging from satellites to close-range Remotely Piloted Aircraft System (RPAS), is leading to a growing demand for new image processing and classification tools. This article presents a comparison of the Random Forest (RF) and Support Vector Machine (SVM) machine-learning algorithms for extracting land-use classes in RPAS-derived orthomosaic using open source R packages. The camera used in this work captures the reflectance of the Red, Blue, Green and Nea… Show more

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Cited by 14 publications
(11 citation statements)
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“…The last two are nonparametric methods, as the number of parameters in the model is not fixed, but changes depend on the data used for training-which usually grows as the training data volume increases [46]. These models were chosen because in the existing literature, they have been proven to yield better results when compared with other methods [56][57][58][59][60]. The independent variables were the reflectance values of the considered bands and the dependent variable to be predicted was the yield value.…”
Section: Yield Prediction With Machine Learningmentioning
confidence: 99%
See 1 more Smart Citation
“…The last two are nonparametric methods, as the number of parameters in the model is not fixed, but changes depend on the data used for training-which usually grows as the training data volume increases [46]. These models were chosen because in the existing literature, they have been proven to yield better results when compared with other methods [56][57][58][59][60]. The independent variables were the reflectance values of the considered bands and the dependent variable to be predicted was the yield value.…”
Section: Yield Prediction With Machine Learningmentioning
confidence: 99%
“…Nonlinear boundaries use a nonlinear kernel function, in our case, the Radial Basis kernel "Gaussian" RBF. For more information on the method, there is extensive literature on SVM applied to remote sensing [45,48,56,57].…”
Section: Yield Prediction With Machine Learningmentioning
confidence: 99%
“…To obtain a robust accuracy assessment, a stratified sample of 10% of the total cells was taken. Previous literature (Piragnolo et al, 2017) shows that using a lower number of cells for training can decrease accuracy, and that more does not improve results significantly. This, of course, depends on the case, the number of features used, on the sensitivity of each feature and on the number of classes, which in our case is two.…”
Section: Training and Validationmentioning
confidence: 92%
“…R is a popular OS statistical tool with extensive capabilities from contributed modules. Analysis of remote sensing is available through dedicated modules that can link to other algorithms available in R like machine learning for classification [56]. Looking through all of R's modules, nine out of 13,755 packages contain the word "lidar" or "laser".…”
Section: R-cran Modulesmentioning
confidence: 99%