Https://landsat.usgs.gov/lpcs The Land Product Characterization System (LPCS) is a web-based system designed to facilitate characterization and validation.

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Presentation transcript:

https://landsat.usgs.gov/lpcs The Land Product Characterization System (LPCS) is a web-based system designed to facilitate characterization and validation of higher-level scientific data products including land products from VIIRS, MODIS, Landsat, and in the future, Sentinel-2 and -3, GOES-16 ABI, and comparable in situ products. The LPCS includes data inventory, access, processing options, and analysis functions LPCS data inventory and selection includes numerous pre-defined cal/val locations, as well as options for user-defined selection of locations. Identify area of interest Select products within area of interest

Review and order products The LPCS permits selection of data to be easily identified, retrieved, co-registered, and compared statistically through a single interface. Customize products Sensor data/products from MODIS and Landsat are currently included within the LPCS. Additional land data/products from VIIRS, Sentinel-2, and GOES-16 will be integrated within the LPCS as they become available as higher-level scientific data products .

Near-IR time series inter-comparisons Output includes summarized tables and charts for selected area of interest and geographically registered and resampled image products for additional analysis by system users. Simulated GOES-16 ABI Landsat MODIS Contacts: Kevin Gallo, NOAA/NESDIS Greg Stensaas, USGS/EROS John Dwyer, USGS/EROS Ryan Longhenry, USGS/EROS Geographically registered and resampled image products. Near-IR time series inter-comparisons