A ready-to-use curated list of Spectral Indices for Remote Sensing applications.
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Updated
Nov 22, 2023 - Python
A ready-to-use curated list of Spectral Indices for Remote Sensing applications.
An R package 📦 making it easy to query, preview, download and preprocess multiple kinds of spatial data 🛰 via R. All beta.
Earth Observation Data Access Gateway
Awesome Spectral Indices for the Google Earth Engine JavaScript API (Code Editor).
An "R" package for automatic download and preprocessing of MODIS Land Products Time Series
Easily create EO mini cubes from STAC in Python
cuSTARFM is a GPU-enabled Spatial and Temporal Adaptive Reflectance Fusion Model (STARFM)
A ninja python package that unifies the Google Earth Engine ecosystem.
cuESTARFM is a GPU-enabled enhanced Spatial and Temporal Adaptive Reflectance Fusion Model (ESTARFM)
A Machine Learning Approach to Forecasting Remotely Sensed Vegetation Health in Python
Package designed to detect and quantify water quality and cyanobacterial harmful algal bloom (CHABs) from remotely sensed imagery
Sentinel 2 and Landsat 8 Atmospheric correction
MODIS Assimilation and Processing Engine
A Google Earth Engine API (interactive dashboard) for satellite-based global climate hazard analysis (urban heat, landcover changes, etc). Project under World Bank Group. ⬇️ ⬇️
The Awesome Spectral Indices Streamlit App.
All the code in this branch will be python based, upon jupyter notebook. You will be able to find all codes for Google Earth Engine(GEE) on this repository. You will be able to link code with each post blog on readme file for each folders. Content from the Blog https://kaflekrishna.com.np will be uploaded here. https://google-earth-engine.com/
Access data from the MODIS web service and perform quality filtering in Python
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