Application of deep learning for earth observation.
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Updated
May 3, 2024 - Jupyter Notebook
Application of deep learning for earth observation.
This work discusses how high resolution satellite images are classified into various classes like cloud, vegetation, water and miscellaneous, using feed forward neural network. Open source python libraries like GDAL and keras were used in this work. This work is generic and can be used for satellite images of any resolution, but with MX band sen…
Executable Research Compendium para a geração de mapas de Uso e Cobertura da Terra utilizando Cubos de dados de imagens de Satélite
This project focuses on land use and land cover classification using Convolutional Neural Networks (CNNs) and Recurrent Neural Networks (RNNs). The classification task aims to predict the category of land based on satellite or aerial images.
Land use land cover (lulc) classification of aerial imagery using machine learning techniques including U-Net architecture Convolutional Neural Networks (CNNs).
A Google Earth Engine Land use (crops) classification workflow using Random Forest, one year of ground data, Sentinel-2, and Landsats; to produce multiyear annual 30-m crop maps
This Repository Houses the Code for our Capstone Thesis Titled : "A New Framework with Convoluted Oscillatory Neural Network (CONN) for Efficient Object-Based Land Use and Land Cover Classification on Remote Sensing Images"
A reproducible, scalable and data-driven workflow for Sentinel-2 land cover classification — outperforming traditional desktop tools like QGIS SCP.
Interactive Shiny Dashboard for monitoring multi-year Land Use / Land Cover (LULC) changes in Istanbul using spatial and statistical visualizations.
Jupyter Notebook Python Script for Analyzing LULC Changes
This repo contains javascript code used in Google Earth engine to perform various Geospatial Data analysis tasks on satellite data. The code utilizes Google earth engines own archive of Satellite data.
This project revisits and rebuilds a previous Land Use and Land Cover (LULC) classification task on the EuroSAT dataset, using Vision Transformers (ViT) and modern PyTorch best practices.
Pixel-based land cover classification in central Hanoi using Sentinel-2 imagery. Implements and compares SVM, Random Forest, and 1D CNN models to support urban planning and remote sensing applications.
Urban Land Use and Land Cover Classification on Google Earth Engine
This repository is intended to provide a set of QGIS tools to facilitate land use/land cover construction.
Remote Sensing-Based ML Prediction of Dengue Fever in Indonesia
This study analyzes how rapid urbanization in Greater Kovai impacts temperature and the Urban Heat Island effect. Using Landsat data, LULC and LST were mapped and predicted with the CA-ANN model for 2028 and 2032. Results show rising built-up areas, higher heat zones, and highlight the need for sustainable urban planning.
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