DocumentCode :
3765314
Title :
Seeing the Earth in the Cloud: Processing one petabyte of satellite imagery in one day
Author :
Michael S. Warren;Steven P. Brumby;Samuel W. Skillman;Tim Kelton;Brendt Wohlberg;Mark Mathis;Rick Chartrand;Ryan Keisler;Mark Johnson
Author_Institution :
Descartes Labs, 1350 Central Ave, Ste 204, Los Alamos, NM 87544, United States
fYear :
2015
Firstpage :
1
Lastpage :
12
Abstract :
The proliferation of transistors has increased the performance of computing systems by over a factor of a million in the past 30 years, and is also dramatically increasing the amount of data in existence, driving improvements in sensor, communication and storage technology. Multi-decadal Earth and planetary remote sensing global datasets at the petabyte (8×1015 bits) scale are now available in commercial clouds (e.g., Google Earth Engine and Amazon NASA NEX), and new commercial satellite constellations are planning to generate petabytes of images per year, providing daily global coverage at a few meters per pixel. Cloud storage with adjacent high-bandwidth compute, combined with recent advances in machine learning for computer vision, is enabling understanding of the world at a scale and at a level of granularity never before feasible. We report here on a computation processing over a petabyte of compressed raw data from 2.8 quadrillion pixels (2.8 petapixels) acquired by the US Landsat and MODIS programs over the past 40 years. Using commodity cloud computing resources, we convert the imagery to a calibrated, georeferenced, multiresolution tiled format suited for machine-learning analysis. We believe ours is the first application to process, in less than a day, on generally available resources, over a petabyte of scientific image data. We report on work using this reprocessed dataset for experiments demonstrating country-scale food production monitoring, an indicator for famine early warning. We apply remote sensing science and machine learning algorithms to detect and classify agricultural crops and then estimate crop yields.
Keywords :
"Earth","Satellites","Cloud computing","Image coding","Production","Monitoring","MODIS"
Publisher :
ieee
Conference_Titel :
Applied Imagery Pattern Recognition Workshop (AIPR), 2015 IEEE
Electronic_ISBN :
2332-5615
Type :
conf
DOI :
10.1109/AIPR.2015.7444536
Filename :
7444536
Link To Document :
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