Eine Plattform für die Wissenschaft: Bauingenieurwesen, Architektur und Urbanistik
Classification of Indian cities using Google Earth Engine
The rapid expansion of cities and the impacts of urbanization on local and global environmental factors such as biodiversity and climate change are of great concern. Reliable rapid approaches for mapping the expansion of cities are of increasing importance today. In this paper, we explore the use of Google Earth Engine to classify land cover in Indian cities from Landsat imagery, using a Random Forest approach, a robust per-pixel approach to supervised classification which generates classification trees based on the band values of the desired classes. Cities were classified into four classes – urban, vegetation, waterbody, and fallow land. We developed global and individual random forest models and used them to classify India’s 10 largest cities. Our results show that the global model produces accuracies greater to individual models, with an overall classification accuracy greater than 80% for each city. This research provides an empirically grounded method to map cities.
Classification of Indian cities using Google Earth Engine
The rapid expansion of cities and the impacts of urbanization on local and global environmental factors such as biodiversity and climate change are of great concern. Reliable rapid approaches for mapping the expansion of cities are of increasing importance today. In this paper, we explore the use of Google Earth Engine to classify land cover in Indian cities from Landsat imagery, using a Random Forest approach, a robust per-pixel approach to supervised classification which generates classification trees based on the band values of the desired classes. Cities were classified into four classes – urban, vegetation, waterbody, and fallow land. We developed global and individual random forest models and used them to classify India’s 10 largest cities. Our results show that the global model produces accuracies greater to individual models, with an overall classification accuracy greater than 80% for each city. This research provides an empirically grounded method to map cities.
Classification of Indian cities using Google Earth Engine
Agarwal, Shivani (Autor:in) / Nagendra, Harini (Autor:in)
Journal of Land Use Science ; 14 ; 425-439
02.11.2019
15 pages
Aufsatz (Zeitschrift)
Elektronische Ressource
Englisch
Distributed urbanism : cities after Google earth
TIBKAT | 2010
|Google Earth and Google Earth Voyager
British Library Online Contents | 2019
|Drought Analysis of an Area Using Google Earth Engine
Springer Verlag | 2024
|