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global_flood_mapper
This repository contains links to the Global Flood Mapper (GFM). Usage instructions are given here. For more details, please check the journal article titled "Global Flood Mapper: A novel Google Earth Engine application for rapid flood mapping using Sentinel-1 SAR."Landsat-Classification-Using-Neural-Network
All the files mentioned in the article on Towards Data Science Neural Network for Landsat Classification Using Tensorflow in Python | A step-by-step guide.QGIS-Plugin-Produce-Training-Samples-For-Deep-Learning
Landsat-Classification-Using-Convolution-Neural-Network
Source code and files mentioned in the medium post titled "Is CNN equally shiny on mid-resolution satellite data?" available at https://towardsdatascience.com/is-cnn-equally-shiny-on-mid-resolution-satellite-data-9e24e68f0c08pyrsgis
This repository cointains the source code of the 'pyrsgis' Python package.COINS
This repository contains the source code of the COINS tool that allows to deduce natural continuity of street network.python_gdal_automated_windows
This repository contains the script for automated download, installation and set-up of Python and GDAL.Kathmandu_urban_growth_gwr
pixel_level_land_classification
Tutorial demonstrating how to create a semantic segmentation (pixel-level classification) model to predict land cover from aerial imagery. This model can be used to identify newly developed or flooded land. Uses ground-truth labels and processed NAIP imagery provided by the Chesapeake Conservancy.Love Open Source and this site? Check out how you can help us