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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-9e24e68f0c08COINS
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.Land-Cover-Using-Machine-Learning
This repository contains links to resources for land cover classification.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