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Astrometry.net -- automatic recognition of astronomical images

Home Page: http://astrometry.net

License: BSD 3-Clause "New" or "Revised" License

Makefile 1.17% Python 15.85% C 78.11% Gnuplot 0.01% Awk 0.09% C++ 1.99% Objective-C 0.23% Shell 0.33% Perl 0.01% PHP 0.02% PLSQL 0.01% CSS 0.20% JavaScript 0.44% HTML 1.56%

astrometry.net's Introduction

Astrometry.net

Build Status Tag Version License

Automatic recognition of astronomical images; or standards-compliant astrometric metadata from data.

Latest release: http://astrometry.net/downloads/astrometry.net-latest.tar.gz

If you have astronomical imaging of the sky with celestial coordinates you do not know—or do not trust—then Astrometry.net is for you. Input an image and we'll give you back astrometric calibration meta-data, plus lists of known objects falling inside the field of view.

We have built this astrometric calibration service to create correct, standards-compliant astrometric meta-data for every useful astronomical image ever taken, past and future, in any state of archival disarray. We hope this will help organize, annotate and make searchable all the world's astronomical information.

Copyright 2006-2015 Michael Blanton, David W. Hogg, Dustin Lang, Keir Mierle and Sam Roweis (the Astrometry.net Team).

Contributions from Sjoert van Velzen, Themos Tsikas, Andrew Hood, Thomas Stibor, Denis Vida, Ole Streicher, David Warde-Farley, Jon Barron, Christopher Stumm, Michal Kočer (Klet Observatory) and others.

Parts of the code written by the Astrometry.net Team are licensed under a 3-clause BSD-style license. See the file LICENSE for the full license text. However, since this code uses libraries licensed under the GNU GPL, the whole work is distributed under the GPL version 3 or later.

Code development happens at http://github.com/dstndstn/astrometry.net

The documentation is at http://astrometry.net/doc

There is a (google group) forum at http://astrometry.net/group

Additional stuff at http://astrometry.net

Code snapshots and releases are at http://astrometry.net/downloads

The web service is at http://nova.astrometry.net

For academic use, please cite the paper:

Lang, D., Hogg, D.W., Mierle, K., Blanton, M., & Roweis, S., 2010, Astrometry.net: Blind astrometric calibration of arbitrary astronomical images, The Astronomical Journal 139, 1782--1800.

Bibtex | Bibtex@ADS | arXiv | AJ | doi:10.1088/0004-6256/139/5/1782

astrometry.net's People

Contributors

dstndstn avatar kevinbchen avatar clalimarmo avatar davidwhogg avatar dvida avatar olebole avatar keir avatar tstibor avatar 4ks1 avatar mykytyn avatar georgviehoever avatar jonbarron avatar timj avatar mkplante avatar mike-k0 avatar stumm avatar d33psky avatar hazenbabcock avatar parejkoj avatar nudomarinero avatar paulprice avatar jochym avatar simonrw avatar wtgee avatar rainwoodman avatar

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