1. A parallel-cascaded ensemble of machine learning models for crop type classification in Google Earth Engine using multi-temporal Sentinel-1/2 and Landsat-8/9 remote sensing data;Abdali;Remote Sens. (Basel),2024
2. Random Forests;Breiman;Mach. Learn.,2001
3. The First Comprehensive Accuracy Assessment of GlobeLand30 at a National Level: Methodology and Results;Brovelli;Remote Sens. (Basel),2015
4. Enhanced contextual representation with deep neural networks for land cover classification based on remote sensing images;Cheng;Int. J. Appl. Earth Obs. Geoinf.,2022
5. Application of a parallel spectral–spatial convolution neural network in object-oriented remote sensing land use classification;Cui;Remote Sens. Lett.,2018