Bibliography
Published work by our group
In reverse chronological order:
    - 
    Lang, D. &
    Hogg, D. W.,
    2011,
    Searching for comets on the World Wide Web: The orbit of 17P/Holmes from the behavior of photographers
    The Astronomical Journal
    144, 46.  
    Bibtex
    
 We (re-)discover a comet by doing an image search on the Web.
- 
    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
    
 We say what we've been doing all these years.
- Lang, D.,
        Hogg, D. W.,
	Jester, S., &
	Rix, H.-W.,
	2009,
	Measuring the undetectable: Proper motions and parallaxes of very faint sources,
        The Astronomical Journal,
        137 4400–4411.
 By simultaneous modeling of the individual-epoch images in
        a multi-epoch (time series) imaging data set, we show that we
        can measure proper motions of stars well below the magnitude
        level (brightness) at which they can be detected in each
        individual image.  By this method we discover a set of new,
        very cool brown dwarfs (objects too low in mass to start
        hydrogen burning and become stars).
- Hogg, D. W. &
	Lang, D.,
	2008,
	
Astronomical imaging: The theory of everything,
	Classification and Discovery in Large Astronomical Surveys,
	C.A.L. Bailer-Jones (ed.), AIP Conference Proceedings
        1082, 331–338.
 We present an argument that astronomical catalogs should be
      explicitly created as image models, and that the best-fit or
      highest likelihood model of the data is also the best possible
      astronomical catalog.  A model of this form is a platform for
      automated discovery, because it is capable of identifying
      informative failures of the model in new data at the pixel
      level, or as statistical anomalies in the joint distribution of
      residuals from many images.
- Barron, J. T.,
        Hogg, D. W.,
        Lang, D., &
        Roweis, S.,
        2008,
        Blind Date:
	  Using proper motions to determine the ages of historical images,
        The Astronomical Journal,
        136 1490–1501.
 Using only raw pixel data and known catalog proper
	motions, it is possible to accurately estimate the date of
	origin of historical imagery.  This allows us to retrieve lost
	meta-data, improve astrometric calibration, and re-estimate
	proper motions.
- Hogg, D. W.,
	Blanton, M.,
	Lang, D.,
	Mierle, K., &
	Roweis, S.,
        2008,
        Automated
        Astrometry,
        Astronomical Data Analysis Software and Systems XVII,
	R. W. Argyle, P. S. Bunclark, and J. R. Lewis, eds.,
	ASP Conference Series 394, 27–34.
 A summary of the project as of 2007 September, aimed at
    astronomers with an interest in software.
- Barron, J. T.,
        Stumm, C.,
        Hogg, D. W.,
        Lang, D., &
	Roweis, S.,
        2008,
        Cleaning
        the USNO-B Catalog
        through automatic detection of optical artifacts,
        The Astronomical Journal
        135 414–422.
 The USNO-B Catalog of astrometric standards contains about
    2 percent spurious entries that are caused by diffraction
    spikes and circular reflection halos around bright stars in the
    original imaging data.  We use computer vision techniques to
    identify and remove them.  Our code and data are
    available here.
- Harvey, C.,
        2004,
        New algorithms for automated astrometry [PDF],
        MSc Thesis, University of Toronto.
 Harvey shows that solution to the blind astrometry problem
    (ie, no first guess at image pointing, rotation, or scale)
    is possible for at least some kinds of data.  Two methods are
    implemented.
Published work by other groups
In alphabetical order:
    - Groth, E. J.,
        1986,
        A pattern-matching algorithm for two-dimensional coordinate lists,
        The Astronomical Journal
        91 1244–1248.
 This is the first published algorithm for matching image
    stars to catalog stars that does not depend on image scale.  The
    method makes use of triangles, with many triangles contributing to
    each solution.  The scaling (with the number of stars n) is
    bad, but the project is similar in spirit to ours.
- Liebe, C. C.,
        1993,
        Pattern recognition of star constellations for spacecraft applications,
        IEEE Aerospace and Electronic Systems Magazine
        8 (no 1) 33–39.
 Liebe shows that the blind astrometry problem is easily
    solved when (a) you have a camera with a large field
    of view (tens of deg), (b) you know exactly the image
    scale (ie, your images are calibrated in deg), and
    (c) you are working with the brightest 1000 or so
    stars on the sky.  The method involves matching triangles of
    stars.
- Pál, A. & Bakos, G. A.,
        2006
        Astrometry in wide-field surveys,
        The Publications of the Astronomical Society of the Pacific
        118 1474–1483.
 This is similar in spirit to Groth (1986), but includes a
    very impressive (and successful) test on real-world
    data.
- Storkey, A. J.,
        Hambly, N. C.,
        Williams, C. K. I.,
        & Mann, R. G.,
        2004,
        Cleaning sky survey data bases using Hough transform and renewal string approaches,
        Monthly Notices of the Royal Astronomical Society
        347 36–51
 They present clever techniques for the automatic detection
    of common defects in plate-based astronomical
    catalogs.
- Valdes, F. G.,
        Campusano, L. E.,
        Velasquez, J. D.,
        & Stetson, P. B.,
        1995,
        FOCAS Automatic Catalog Matching Algorithms,
	Publications of the Astronomical Society of the Pacific
        107 1119–1128
 An implementation of a method similar to that of Groth
    (1986).
Background material
In alphabetical order:
    - Calabretta, M. R. &
        Greisen, E. W.,
        2002,
        Representations of celestial coordinates in FITS,
        Astronomy & Astrophysics
        395 1077–1122.
 This paper, along with its companion (Greisen &
    Calabretta 2002, below), sets down the basic FITS WCS standard for
    astronomical images.  The basic WCS standard allows for various
    simple spherical-to-planar image projections for the purposes of
    making sky maps.
- Górski, K. M.,
        Hivon, E.,
        Banday, A. J.,
        Wandelt, B. D.,
        Hansen, F. K.,
        Reinecke, M., &
        Bartelmann, M.,
        2005,
        HEALPIX: A framework for high resolution discretization and fast analysis of data distributed on the sphere,
        The Astrophysical Journal
        622 759–771.
    
- Greisen, E. W. &
        Calabretta, M. R. 2002,
        Representations of world coordinates in FITS,
        Astronomy & Astrophysics
        395 1061–1075.
    
- Monet, D. G. et al, 2003,
        The USNO-B Catalog,
        The Astronomical Journal
        125 984–993.
 The explanatory paper for the USNO-B1.0 astrometric
    catalog, on which all of our work is based, either directly or
    indirectly.
- Shupe, D. L.,
        Moshir, M.,
        Li, J.,
        Makovoz, D.,
        Narron, R., &
        Hook, R. N.,
        2005,
        The SIP Convention for Representing Distortion in FITS Image Headers,
        in ASP Conf. Ser. 347: Astronomical Data Analysis Software and Systems XIV,
        Shopbell, P., Britton M., & Ebert R., eds.,
        491–498.
 This paper clearly walks the user through the very sensible
    SIP extension to the TAN option in the WCS standard.
- Wells, D. C.,
        Greisen, E. W., &
        Harten, R. H.,
        1981,
        FITS: A flexible image transport system,
        Astronomy & Astrophysics Supplement Series
        44 363–370.