deepbedmap
Elevation model generator
A system for generating high-resolution digital elevation models of Antarctica using deep neural networks and a flat file data repository
Going beyond BEDMAP2 using a super resolution deep neural network. Also a convenient flat file data repository for high resolution bed elevation datasets around Antarctica.
43 stars
5 watching
26 forks
Language: Jupyter Notebook
last commit: over 2 years ago
Linked from 1 awesome list
antarcticabedmapbinderchainerdata-sciencedeep-neural-networkdigital-elevation-modelflat-file-dbgenerative-adversarial-networkglaciologyjupyter-notebookoptunapangeoremote-sensingsuper-resolution
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