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izvor podataka: crosbi

A micro-scale approach for cropland suitability assessment of permanent crops using machine learning and a low-cost UAV (CROSBI ID 320216)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Radočaj, Dorijan ; Šiljeg, Ante ; Plaščak, Ivan ; Marić, Ivan ; Jurišić, Mladen A micro-scale approach for cropland suitability assessment of permanent crops using machine learning and a low-cost UAV // Agronomy, 13 (2023), 2; 362, 17. doi: 10.3390/agronomy13020362

Podaci o odgovornosti

Radočaj, Dorijan ; Šiljeg, Ante ; Plaščak, Ivan ; Marić, Ivan ; Jurišić, Mladen

engleski

A micro-scale approach for cropland suitability assessment of permanent crops using machine learning and a low-cost UAV

This study presents a micro-scale approach for the cropland suitability assessment of permanent crops based on a low-cost unmanned aerial vehicle (UAV) equipped with a commercially available RGB sensor. The study area was divided into two subsets, with subsets A and B containing tangerine plantations planted during years 2000 and 2008, respectively. The fieldwork was performed on 27 September 2021 by using a Mavic 2 Pro UAV equipped with a commercial RGB sensor. The cropland suitability was performed in a two-step classification process, utilizing: (1) supervised classification with machine learning algorithms for creating a vegetation mask ; and (2) unsupervised classification for the suitability assessment according to the Food and Agriculture Organization of the United Nations (FAO) land suitability standard. The overall accuracy and kappa coefficients were used for the accuracy assessment. The most accurate combination of the input data and parameters was the classification using ANN with all nine input rasters, managing to utilize complimentary information regarding the study area spectral and topographic properties. The resulting suitability levels indicated positive suitability in both study subsets, with 63.1% suitable area in subset A and 59.0% in subset B. Despite that, the efficiency of agricultural production can be improved by managing crop and soil properties in the currently non-suitable class (N1), providing recommendations for farmers for further agronomic inspection. Alongside low-cost UAV, the open-source GIS software and globally accepted FAO standard are expected to further improve the availability of its application for permanent crop plantation management.

unmanned aerial vehicle ; tangerine plantation ; vegetation index ; FAO land suitability ; artificial neural network ; open-source GIS software

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Podaci o izdanju

13 (2)

2023.

362

17

objavljeno

2073-4395

10.3390/agronomy13020362

Povezanost rada

Geografija, Interdisciplinarne biotehničke znanosti, Poljoprivreda (agronomija)

Poveznice
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