IN21B-3706:
Meta Data Mining in Earth Remote Sensing Data Archives

Tuesday, 16 December 2014
Daniel Steinwand, USGS-EROS, Sioux Falls, SD, United States and Brian Davis, Stinger Ghaffarian Technologies Sioux Falls, Sioux Falls, SD, United States
Abstract:
Modern search and discovery tools for satellite based remote sensing data are often catalog based and rely on query systems which use scene- (or granule-) based meta data for those queries. While these traditional catalog systems are often robust, very little has been done in the way of meta data mining to aid in the search and discovery process. The recently coined term “Big Data” can be applied in the remote sensing world’s efforts to derive information from the vast data holdings of satellite based land remote sensing data. Large catalog-based search and discovery systems such as the United States Geological Survey's Earth Explorer system and the NASA Earth Observing System Data and Information System's Reverb-ECHO system provide comprehensive access to these data holdings, but do little to expose the underlying scene-based meta data. These catalog-based systems are extremely flexible, but are manually intensive and often require a high level of user expertise. Exposing scene-based meta data to external, web-based services can enable machine-driven queries to aid in the search and discovery process. Furthermore, services which expose additional scene-based content data (such as product quality information) are now available and can provide a “deeper look” into remote sensing data archives too large for efficient manual search methods.

This presentation shows examples of the mining of Landsat and Aster scene-based meta data, and an experimental service using OPeNDAP to extract information from quality band from multiple granules in the MODIS archive.