AUTHOR=Drobnjak Siniša , Stojanović Marko , Djordjević Dejan , Bakrač Saša , Jovanović Jasmina , Djordjević Aleksandar TITLE=Testing a New Ensemble Vegetation Classification Method Based on Deep Learning and Machine Learning Methods Using Aerial Photogrammetric Images JOURNAL=Frontiers in Environmental Science VOLUME=Volume 10 - 2022 YEAR=2022 URL=https://www.frontiersin.org/journals/environmental-science/articles/10.3389/fenvs.2022.896158 DOI=10.3389/fenvs.2022.896158 ISSN=2296-665X ABSTRACT=The objective of this research is to report results from a new ensemble method for vegetation classification that uses deep learning (DL) and machine learning (ML) techniques. Deep learning and machine learning architectures have recently been used in methods for vegetation classification, proving their efficacy in several scientific investigations. However, some limitations have been highlighted in the literature, such as insufficient model variance and restricted generalization capabilities. Ensemble DL and ML models has often been recommended as a feasible method to overcome these constraints. A considerable increase in classification accuracy for vegetation classification was achieved by growing an ensemble of decision trees and allowing them to vote for the most popular class. An ensemble DL and ML architecture was presented in this study to increase the prediction capability of individual DL and ML models. Three DL and ML models, namely Convolutional Neural Network (CNN), Random Forest (RF), and biased Support vector machine (B-SVM), were used to classify vegetation in the Eastern part of Serbia, together with their ensemble form (CNN-RF-BSVM). The suggested DL and ML architecture achieved the best modeling results (0.93), followed by CNN (0.90), RF (0.91), and B-SVM (0.88). The results showed that the suggested ensemble model outperformed the DL and ML models in terms of overall accuracy by up to 5%, which was validated by the Wilcoxon signed-rank test. In terms of classification accuracy and training time, the results show that the Random Forest classifier is on par with biased Support vector machines (B-SVMs) and CNN technique. According to this research, Random Forest classifiers require fewer and easier-to-define user-defined parameters than B-SVMs and CNN methods. The proposed ensemble technique CNN-RF-BSVM also improved classification accuracy significantly (by 4%) according to overall accuracy analysis.