Land Surface Temperature from Landsat on Google Earth Engine
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Updated
Aug 2, 2023 - JavaScript
Land Surface Temperature from Landsat on Google Earth 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. ⬇️ ⬇️
This is the github repository for the article: Convolutional Neural Network Modelling for MODIS Land Surface Temperature Super-Resolution
Practical split-window algorithm estimating Land Surface Temperature from Landsat 8 OLI/TIRS imagery
Figuring out what the hottest villages in Kerala are with the help of Microsoft's Planetary Computer
Python package to estimate Land Surface Temperatures from Google Earth Engine's Landsat imagery
Image-to-Image Training for Spatially Seamless Air Temperature Estimation with Satellite Images and Station Data
Extracts data from one or more landSAF LST HDF5s, resamples them, stacks them, and adds them to a new netCDF4.
Global MODIS NDVI and LST python image display and 20+ year time-series analysis program
Convert Raw Landsat Data from Digital Number to Surface Reflectance using the Visible Infra-red bands and composite (band stacking) the scene bands. Estimate LST from thermal bands
Ground stations - satelite data comparison using low-cost temperature sensors and MODIS Land Surface Temperature data
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.
Predicting urban heat island for the city of Pune using MODIS LST, PM2.5 and GLC_FCS30D Landcover dataset. The neural network consists of three covolution streams and attention unet for feature fusion and UHI map creation.
Predicting urban heat island for the city of Pune using MODIS LST, PM2.5 and GLC_FCS30D Landcover dataset. The neural network consists of three covolution streams and attention unet for feature fusion and UHI map creation.
This repository contains the Python codes used in the short paper "Sensitivity of Land Surface Temperature to Emissivity Retrieved from Landsat 8 Data", submitted to the XXIV Brazilian Symposium on GeoInformatics.
Heat vulnerability of ZCTAs within the Boston Metropolitan Region based on demographic and environmental indicators.
Online version of a training manual for reading netcdf GOES-16 LST data in MATLAB.
Parallel Data Assimilation Framework, pre-patched for TSMP-PDAF
This is fast-response software package for environmental applications
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