Litcius/Paper detail

GeoColor: A Blending Technique for Satellite Imagery

Steven D. Miller, Daniel T. Lindsey, Curtis J. Seaman, Jeremy E. Solbrig

2020Journal of Atmospheric and Oceanic Technology25 citationsDOIOpen Access PDF

Abstract

Abstract Value-added imagery is a useful means of communicating multispectral environmental satellite radiometer data to the human analyst. The most effective techniques strike a balance between science and art. The science side requires engineering physical algorithms capable of distilling the complex scene into a reduced set of key parameters. The artistic side involves design and construction of visually intuitive displays that maximize information content within the product image. The utility of such imagery to human analysts depends on the extent to which parameters or features of interest are conveyed unambiguously. Here, we detail and demonstrate a dynamic blended imagery technique, based on spatially variant transparency factors whose values are tied to algorithmically isolated parameters. The technique enables seamless display of multivariate information, and is applicable to any imaging system based on red–green–blue composites. We illustrate this technique in the context of GeoColor—an application of the Geostationary Operational Environmental Satellite R (GOES-R) series Advanced Baseline Imager (ABI) supporting operational forecasting and used widely in public communication of weather information.

Topics & Concepts

Computer scienceMultispectral imageGeostationary orbitSatellite imageryRemote sensingBaseline (sea)Context (archaeology)RadiometerSatelliteKey (lock)Artificial intelligenceGeologyEngineeringComputer securityOceanographyPaleontologyAerospace engineeringRemote-Sensing Image ClassificationRemote Sensing in AgricultureAdvanced Image Fusion Techniques