STARS
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- United States of America
Spatial Timeseries for Automated high-Resolution multi-Sensor data fusion (STARS)
Margaret C. Johnson (she/her)
maggie.johnson@jpl.nasa.gov
Principal investigator: lead of data fusion methodological development and Julia code implementations.
NASA Jet Propulsion Laboratory 398L
Gregory H. Halverson (they/them)
gregory.h.halverson@jpl.nasa.gov
Lead developer for data processing pipeline design and development, moving window implementation, and code organization and management.
NASA Jet Propulsion Laboratory 329G
Jouni I. Susiluoto
jouni.i.susiluoto@jpl.nasa.gov
Technical contributor for methodology development, co- developer of Julia code for Kalman filtering recursion.NASA Jet Propulsion Laboratory 398L
Kerry Cawse-Nicholson (she/her)
kerry-anne.cawse-nicholson@jpl.nasa.gov
Concept development and project management. Advised on technical and scientific requirements for application and mission integration.
NASA Jet Propulsion Laboratory 329G
Joshua B. Fisher (he/him)
jbfisher@chapman.edu
Concept development and project management
Chapman University
Glynn C. Hulley (he/him)
glynn.hulley@jpl.nasa.gov
Advised on technical and scientific requirements for application and mission integration.
NASA Jet Propulsion Laboratory 329G
Nimrod Carmon (he/him)
nimrod.carmon@jpl.nasa.gov
Technical contributor for data processing, validation/verification, and hyperspectral resampling
NASA Jet Propulsion Laboratory 398L
STARS is a general data fusion methodology utilizing spatiotemporal statistical models to optimally combine high spatial resolution VSWIR measurements with high temporal resolution measurements from multiple instruments. The methods are highly-scalable, able to fuse <100 m spatial resolution products in near-real time (<24 hrs) on regional to global scales, to facilitate online data processing as well as large-scale reprocessing of mission datasets. The statistical spatiotemporal modeling framework provides with each fused surface reflectance product associated pixel-level uncertainties incorporating any known data source measurement uncertainties, bias characteristics, and degree of historical data missingness.
The specific capabilities offered by STARS are:
- automatic, high-resolution spatial and temporal gap-filling,
- a tunable fusion framework allowing the user to choose a level of accuracy vs computational complexity, and
- quantifiable uncertainties that can be used for downstream product sensitivity/uncertainty assessments and that can be incorporated into higher-order data product quality flags.
STARS is a significant advancement for surface reflectance data fusion and for quantifying (and potentially reducing) the uncertainty associated with satellite-derived inputs in retrievals of science quantities of interest.
The Julia implementation for the STARS data fusion algorithm is inSTARS.jl.
There are several supporting sub-components in generalized Julia packages, including:
- SentinelTiles.jl for geo-referencing Sentinel UTM tiles
- MODLAND.jl for geo-referencing MODIS/VIIRS sinusoidal tiles
- CMR.jl for searching the Common Metadata Repository (CMR)
- HLS.jl for searching and downloading the Harmonized Landsat Sentinel (HLS) dataset
Popular repositoriesLoading
- STARSDataFusion.jl
STARSDataFusion.jl PublicSpatial Timeseries for Automated high-Resolution multi-Sensor data fusion (STARS) Julia Package
- harmonized-landsat-sentinel
harmonized-landsat-sentinel PublicHarmonized Landsat Sentinel (HLS) search and download utility
- VNP09GA-002
VNP09GA-002 PublicVIIRS/NPP Surface Reflectance Daily L2G Global 1 km and 500 m SIN Grid Search and Download Utility
- EMIT-L2A-RFL
EMIT-L2A-RFL PublicEMIT L2A Estimated Surface Reflectance and Uncertainty and Masks 60 m Search and Download Utility
- HyperSTARS.jl
HyperSTARS.jl PublicHyperspectral Spatial Timeseries for Automated high-Resolution multi-Sensor data fusion (STARS) Julia Package
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- HyperSTARS.jl Public
Hyperspectral Spatial Timeseries for Automated high-Resolution multi-Sensor data fusion (STARS) Julia Package
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STARS-Data-Fusion/harmonized-landsat-sentinel’s past year of commit activity - EMIT-L2A-RFL Public
EMIT L2A Estimated Surface Reflectance and Uncertainty and Masks 60 m Search and Download Utility
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STARS-Data-Fusion/EMIT-L2A-RFL’s past year of commit activity - STARSDataFusion.jl Public
Spatial Timeseries for Automated high-Resolution multi-Sensor data fusion (STARS) Julia Package
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STARS-Data-Fusion/Modland.jl’s past year of commit activity - VNP43NRTAlbedo.jl Public
Near-Real-Time Implementation of the VNP43 VIIRS BRDF Correction Algorithm for VNP09GA Surface Reflectance
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STARS-Data-Fusion/Kings-Canyon-Snow-EMIT’s past year of commit activity - VNP09GA-002 Public
VIIRS/NPP Surface Reflectance Daily L2G Global 1 km and 500 m SIN Grid Search and Download Utility
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STARS-Data-Fusion/VNP09GA-002’s past year of commit activity - CommonMetadataRepository.jl Public
Utilities for Accessing NASA Remote Sensing Data Using the Common Metadata Repository (CMR) API in Julia
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