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Modeling and detection of invasive trees using UAV image and machine learning in a subtropical forest in Brazil
Affiliation:1. Forest Engineering Postgraduate Program, Federal University of Santa Maria / UFSM – Cidade Universitária, Prédio 44 - Sala 5255, Camobi, Santa Maria, RS, Brazil;2. Federal University of the Jequitinhonha and Mucuri Valleys/UFVJM - Rua da Glória, n° 187, Centro, CEP 39100-000, Diamantina, MG, Brazil;3. Federal University of Espírito Santo, Av. Governador Lindemberg, 316, CEP, 29550-000, Jerônimo Monteiro, ES, Brazil;4. Geography and Geosciences Department, Federal University of Santa Maria, Santa Maria, Rio Grande do Sul 97105-900, Brazil;5. Civil Engineering Department, Federal University of Santa Maria, Santa Maria, Rio Grande do Sul 97105-900, Brazil;6. Federal University of Santa Maria / UFSM – Ernesto Barros, 1345, CEP 96506-322, Cachoeira do Sul, RS, Brazil;1. Latvian Institute of Aquatic Ecology, Agency of Daugavpils University, 4 Voleru st., Riga LV-1007, Latvia;2. Department of Environmental Science, Stockholm University, SE-10691, Stockholm, Sweden;1. Department of Geography, University of Florida, Turlington Hall, 3141, 330 Newell Dr, Gainesville, FL 32611, United States of America;2. Harvard Forest, Harvard University, 324 North Main Street, Petersham, MA 01366-9504, United States of America;1. CSIR-National Institute of Oceanography, Donapaula, Goa 403004, India;2. Nansen Environmental Research Center, Kochi, Kerala 682506, India;3. CSIR-Central Electrochemical Research Institute, Karaikudi, Tamilnadu 630003, India
Abstract:Protected areas play an extremely important role in the conservation of global biodiversity. However, these areas are subject to the introduction of invasive alien species (IAS), which cause damage to native environments. The present study aimed to use images obtained by Unmanned Aerial Vehicles (UAVs) combined with machine learning (ML) algorithms to identify the IAS Hovenia dulcis in a Conservation Unit in southern Brazil. Field data were obtained in a sample area, where the floristic survey of the H. dulcis species was carried out. To obtain remote data, a UAV with a built-in RGB sensor was used. Subsequently, the images were processed for orthomosaic generation and the spatial distribution of the inventoried species, based on manual photointerpretation. Furthermore, in the supervised classification process, four classes of interest were defined: H. dulcis, similar species, shade, and other species. The process involved two approaches (pixel-based - PB and object-based image analysis - OBIA) and two ML algorithms were compared (Random Forest - RF and Support Vector Machine - SVM). Samples were separated into 90% for training and 10% for model validation. For performance analysis, overall accuracy (OA) and Kappa index metrics were calculated. The results show that the RF algorithm in the PB approach had the best performance in the classification of the IAS H. dulcis, presenting a kappa of 0.87 and OA of 91.5%, in the training data set and 90.91% of success in the model validation dataset. Our study demonstrated to be able to reach the results to respond to the raised hypotheses. Furthermore, the UAV-RGB data combined with ML are highly accurate to identify H. dulcis in relation to the other species that make up the forest stratum of the study area.
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