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IMPROVED METHODS FOR ACCESSING
SCIENTIFIC DATA FOR THE MASSES
AMANDA O’CONNOR
Professional Services Business Development Manager
Amanda O’Connor
Amanda O’Connor
Business Development Manager
Harris Corporation
Email: aoconn05@harris.com
303-544-4419
WHO WE ARE
• Broad portfolio, key experts, and proven track record of remote
sensing science and data innovation technology
• 21,000 employees, 9000 scientists & engineers,
worldwide presence representing > 100 countries
• ENVI, IDL, Jagwire, Geiger Mode LiDAR, Sarscape,
Custom Solutions, Geospatial Marketplace. Former RSI
TECHNOLOGY OVERVIEW
KEY CUSTOMERS & PARTNERS
NASA | USDA | NGA | AEROVIRONMENT | USGS/DOI | FEMA | HALIFAX
WATER | CARESTREAM HEALTH | MONSANTO | NATIONAL LABS |
CYTOVIVA | HIGHLAND PRECISION AGRICULTURE | RIT | ASD | EDGE
DATA | CLOUDEO | HYSPEED COMPUTING | OGC | AMAZON | AIRBUS |
NVIDIA | ESRI | DIGITAL GLOBE | PLANET | NOAA|NCAR|CIRES|CU|U
Wisconsin| AER |Harris Corp Internal| Raytheon |EUMETSAT |ESA
|AUSBOM |UK MET Office| AFWA| NRL |NAVO|NREL |FNMOC|NPS|
National Met Offices WW
USE CASES
Capabilities
Best in Class Image Analytics
LiDAR Feature Extraction
SAR Analytics
Leader in Spectral Processing
GPU Acceleration
Cloud Analytics
Medical Imaging and
Microscopy
Commercialization
Esri Integration
Automation
Precision Agriculture SMEs
Numeric Modeling
Photogrammetry SME
Deep Learning/Machine
Learning
Meteorology SME
• Precision Agriculture
• Utility Inspections
• Infrastructure Reconnaissance
• Damage Assessment
• Insurance Verification and Reports
• Research & Development
• Weather and Climate
• MORE…
HARRIS GEOSPATIAL
IDL LiDARENVI JAGWIRE Sarscape
Key Geospatial Tools For Wx and Oceans
• HDF/NetCDF template support in ENVI
• Support GLT and full disk data projections with GOES-16
• Animations of very large data
• Scalable, source code agnostic enterprise infrastructure
• Data provisioning: Harris Geospatial Market Place
• ExactAIS global ship tracking service
USAGE OVERVIEW
USE CASES
Wx Capabilities
• NOAA has a site license for IDL—NASA has BPA
• Virtual machine for sharable IDL Execution
• ENVI/IDL task engine for scaling data production
• Capable of large volume data production, highly
optimized code, parallelizable and GPUs
• Deep learning capabilities, robust and operational— Wet
road/dry road detection, Wx Trends
• Weather Workbench 3-D and 4-D Visualization
• NOAA Hazard Mapping System Interface
• NOAA Study on cloud deployment of radiometric correction
• Helios Traffic Camera Network for hyperlocal Wx
• Plots, Charts, Graphics for NOAA NESDIS, STAR, OAR
HARRIS GEOSPATIAL
| 5MEGA OverviewHarris Proprietary Information
Scientific Data Support
IDL has long supported NetCDF/HDF 5
• Legacy NASA, NOAA support
• Typically needed to understand the format
to read and write files
• Required users not only to be scientists, but
also experts in a file format
| 6MEGA OverviewHarris Proprietary Information
IDL GOES16 Map Projection
• ENVI users ArcGIS Projection Engine and doesn’t handle full disk
data as accuratly as possible
• In IDL 8.6.1 Added specific GOES16 projection for more accuratly
overlaying rasters on full disk data
| 7MEGA OverviewHarris Proprietary Information
VIIRS Support in ENVI
ENVI and HDF/NETCDF
• ENVI had supported Landsat HDF
• Added improved HDF support for Suomi NPP
VIIRS data
• Including
• Bowtie correction
• Calibration
• SDR and EDR support
• Reprojection
• Visualiations
| 8MEGA OverviewHarris Proprietary Information
Calibration
• Calibration applied upon opening
• Calibration options are context
dependant
• Depending on image opened,
Images are processed to radiance,
reflectance, brightness
temperature, or albedo
• Calibration parameters are applied
to each granule (if they are
different)
• Images are then displayed with the
granules together as full image
without granule separation lines
| 9MEGA OverviewHarris Proprietary Information
Bowtie Correction
Step 1: Determine Pixel size, Tie Points, and extents of image
Step 2: Map the GLT data values to a regular geographic grid
Step 3: Interpolation—Weighted Distance or NN
| 10MEGA OverviewHarris Proprietary Information
Bowtie Correction
| 11MEGA OverviewHarris Proprietary Information
Bowtie Correction
| 12MEGA OverviewHarris Proprietary Information
Bowtie Correction
| 13MEGA OverviewHarris Proprietary Information
ENVI 5.4: Dataset Browser
• Easily build new ENVI rasters that contain a combination of
scientific data, attributes, and latitude/longitude information
from HDF and NetCDF files.
• Map attributes from the source dataset to standard ENVI header
fields.
• Add standard ENVI header fields to the new raster with known
metadata values.
• Select latitude and longitude datasets from the source file and
add them to a Geographic Information folder in the Raster
Builder.
• Create XML templates for reading data in HDF4, HDF5 and
NetCDF-3 datasets. Using a template prevents you from having
to use the Dataset Browser to re-define the raster and metadata
for every file.
| 14MEGA OverviewHarris Proprietary Information
• Easily build new ENVI rasters that contain a combination of scientific data,
attributes, and latitude/longitude information from HDF and NetCDF files.
• Map attributes from the source dataset to standard ENVI header fields.
• Select latitude and longitude datasets from the source file and add them to a
Geographic Information folder in the Raster Builder.
• Create XML templates for reading data in HDF4, HDF5 and NetCDF-3
datasets. Using a template prevents you from having to use the Dataset
Browser to re-define the raster and metadata for every file.
• Use GLT and other information to reproject data
ENVI 5.4: Dataset Browser
| 15MEGA OverviewHarris Proprietary Information
NetCDF/HDF5 Browser
| 16MEGA OverviewHarris Proprietary Information
What Does ENVI Get You?
• Verticle Profiles into Layers like Atmospheric Pressure
• Color tables
• Export to other formats
• Export to ArcGIS for Map Authoring
| 17MEGA OverviewHarris Proprietary Information
What does ENVI get you?
• Mapping, Animation, Change Detection, Time Series, Annotation,
Etc
• All Push button and available through the ENVI API
| 18MEGA OverviewHarris Proprietary Information
What is the value?
Enterprise
• With massive increase of data from GOES16, rapid
product creation
• Wx Data services served from the cloud
• Chances of single image analysis low, need a way to
share info as well as extract/combine data quickly
• Georeference quickly, atmospherically correct
• Rapid ingest of space wx data
• Harris working to create a data portal through MapMart
| 19MEGA OverviewHarris Proprietary Information
Questions?
Amanda O’Connor
Business Development Manager
Harris Corporation
Email: aoconn05@harris.com
303-544-4419
Joey Griebel
Federal Account Manager
Harris Corporation
Email: joey.griebel@harris.com
303-413-3974

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Improved Methods for Accessing Scientific Data for the Masses

  • 1. Place image here (10” x 3.5”) IMPROVED METHODS FOR ACCESSING SCIENTIFIC DATA FOR THE MASSES AMANDA O’CONNOR Professional Services Business Development Manager
  • 2. Amanda O’Connor Amanda O’Connor Business Development Manager Harris Corporation Email: aoconn05@harris.com 303-544-4419
  • 3. WHO WE ARE • Broad portfolio, key experts, and proven track record of remote sensing science and data innovation technology • 21,000 employees, 9000 scientists & engineers, worldwide presence representing > 100 countries • ENVI, IDL, Jagwire, Geiger Mode LiDAR, Sarscape, Custom Solutions, Geospatial Marketplace. Former RSI TECHNOLOGY OVERVIEW KEY CUSTOMERS & PARTNERS NASA | USDA | NGA | AEROVIRONMENT | USGS/DOI | FEMA | HALIFAX WATER | CARESTREAM HEALTH | MONSANTO | NATIONAL LABS | CYTOVIVA | HIGHLAND PRECISION AGRICULTURE | RIT | ASD | EDGE DATA | CLOUDEO | HYSPEED COMPUTING | OGC | AMAZON | AIRBUS | NVIDIA | ESRI | DIGITAL GLOBE | PLANET | NOAA|NCAR|CIRES|CU|U Wisconsin| AER |Harris Corp Internal| Raytheon |EUMETSAT |ESA |AUSBOM |UK MET Office| AFWA| NRL |NAVO|NREL |FNMOC|NPS| National Met Offices WW USE CASES Capabilities Best in Class Image Analytics LiDAR Feature Extraction SAR Analytics Leader in Spectral Processing GPU Acceleration Cloud Analytics Medical Imaging and Microscopy Commercialization Esri Integration Automation Precision Agriculture SMEs Numeric Modeling Photogrammetry SME Deep Learning/Machine Learning Meteorology SME • Precision Agriculture • Utility Inspections • Infrastructure Reconnaissance • Damage Assessment • Insurance Verification and Reports • Research & Development • Weather and Climate • MORE… HARRIS GEOSPATIAL IDL LiDARENVI JAGWIRE Sarscape
  • 4. Key Geospatial Tools For Wx and Oceans • HDF/NetCDF template support in ENVI • Support GLT and full disk data projections with GOES-16 • Animations of very large data • Scalable, source code agnostic enterprise infrastructure • Data provisioning: Harris Geospatial Market Place • ExactAIS global ship tracking service USAGE OVERVIEW USE CASES Wx Capabilities • NOAA has a site license for IDL—NASA has BPA • Virtual machine for sharable IDL Execution • ENVI/IDL task engine for scaling data production • Capable of large volume data production, highly optimized code, parallelizable and GPUs • Deep learning capabilities, robust and operational— Wet road/dry road detection, Wx Trends • Weather Workbench 3-D and 4-D Visualization • NOAA Hazard Mapping System Interface • NOAA Study on cloud deployment of radiometric correction • Helios Traffic Camera Network for hyperlocal Wx • Plots, Charts, Graphics for NOAA NESDIS, STAR, OAR HARRIS GEOSPATIAL
  • 5. | 5MEGA OverviewHarris Proprietary Information Scientific Data Support IDL has long supported NetCDF/HDF 5 • Legacy NASA, NOAA support • Typically needed to understand the format to read and write files • Required users not only to be scientists, but also experts in a file format
  • 6. | 6MEGA OverviewHarris Proprietary Information IDL GOES16 Map Projection • ENVI users ArcGIS Projection Engine and doesn’t handle full disk data as accuratly as possible • In IDL 8.6.1 Added specific GOES16 projection for more accuratly overlaying rasters on full disk data
  • 7. | 7MEGA OverviewHarris Proprietary Information VIIRS Support in ENVI ENVI and HDF/NETCDF • ENVI had supported Landsat HDF • Added improved HDF support for Suomi NPP VIIRS data • Including • Bowtie correction • Calibration • SDR and EDR support • Reprojection • Visualiations
  • 8. | 8MEGA OverviewHarris Proprietary Information Calibration • Calibration applied upon opening • Calibration options are context dependant • Depending on image opened, Images are processed to radiance, reflectance, brightness temperature, or albedo • Calibration parameters are applied to each granule (if they are different) • Images are then displayed with the granules together as full image without granule separation lines
  • 9. | 9MEGA OverviewHarris Proprietary Information Bowtie Correction Step 1: Determine Pixel size, Tie Points, and extents of image Step 2: Map the GLT data values to a regular geographic grid Step 3: Interpolation—Weighted Distance or NN
  • 10. | 10MEGA OverviewHarris Proprietary Information Bowtie Correction
  • 11. | 11MEGA OverviewHarris Proprietary Information Bowtie Correction
  • 12. | 12MEGA OverviewHarris Proprietary Information Bowtie Correction
  • 13. | 13MEGA OverviewHarris Proprietary Information ENVI 5.4: Dataset Browser • Easily build new ENVI rasters that contain a combination of scientific data, attributes, and latitude/longitude information from HDF and NetCDF files. • Map attributes from the source dataset to standard ENVI header fields. • Add standard ENVI header fields to the new raster with known metadata values. • Select latitude and longitude datasets from the source file and add them to a Geographic Information folder in the Raster Builder. • Create XML templates for reading data in HDF4, HDF5 and NetCDF-3 datasets. Using a template prevents you from having to use the Dataset Browser to re-define the raster and metadata for every file.
  • 14. | 14MEGA OverviewHarris Proprietary Information • Easily build new ENVI rasters that contain a combination of scientific data, attributes, and latitude/longitude information from HDF and NetCDF files. • Map attributes from the source dataset to standard ENVI header fields. • Select latitude and longitude datasets from the source file and add them to a Geographic Information folder in the Raster Builder. • Create XML templates for reading data in HDF4, HDF5 and NetCDF-3 datasets. Using a template prevents you from having to use the Dataset Browser to re-define the raster and metadata for every file. • Use GLT and other information to reproject data ENVI 5.4: Dataset Browser
  • 15. | 15MEGA OverviewHarris Proprietary Information NetCDF/HDF5 Browser
  • 16. | 16MEGA OverviewHarris Proprietary Information What Does ENVI Get You? • Verticle Profiles into Layers like Atmospheric Pressure • Color tables • Export to other formats • Export to ArcGIS for Map Authoring
  • 17. | 17MEGA OverviewHarris Proprietary Information What does ENVI get you? • Mapping, Animation, Change Detection, Time Series, Annotation, Etc • All Push button and available through the ENVI API
  • 18. | 18MEGA OverviewHarris Proprietary Information What is the value? Enterprise • With massive increase of data from GOES16, rapid product creation • Wx Data services served from the cloud • Chances of single image analysis low, need a way to share info as well as extract/combine data quickly • Georeference quickly, atmospherically correct • Rapid ingest of space wx data • Harris working to create a data portal through MapMart
  • 19. | 19MEGA OverviewHarris Proprietary Information Questions? Amanda O’Connor Business Development Manager Harris Corporation Email: aoconn05@harris.com 303-544-4419 Joey Griebel Federal Account Manager Harris Corporation Email: joey.griebel@harris.com 303-413-3974

Hinweis der Redaktion

  1. Radiance is w/m2/sr/micrometer. --swap graphic—try an I band Calibration options are context dependent, so if you are opening a thermal band you have radiance and brightness temp (K)
  2. --Call out weighted distance vs nn interpolation. 3x3 kernel is used for weighted distance. NN is best for classifications bc you don’t don’t want to change classes. Weighted dist averages the kenerl, nn picks the pixel closest.
  3. The center of the image is located at the following coordinates: * Lat,Lon DMS: 41°23'57.81"N, 104°47'47.89"W * Lat,Lon DD: 41.39939168N, 104.79663536W * Map: -104.7966, 41.3994 * Proj: Geographic Lat/Lon, WGS-84 * MGRS: 13TEF1700083115
  4. The center of the image is located at the following coordinates: * Lat,Lon DMS: 41°23'57.81"N, 104°47'47.89"W * Lat,Lon DD: 41.39939168N, 104.79663536W * Map: -104.7966, 41.3994 * Proj: Geographic Lat/Lon, WGS-84 * MGRS: 13TEF1700083115