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Assembly and Classification of Spectral Energy Distributions

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Title: Assembly and Classification of Spectral Energy Distributions


1
Assembly and Classification of Spectral Energy
Distributions A New VO Web Service
  • Hans-Martin Adorf, GAVO, Max-Planck-Institut für
    extraterr. Physik, Garching
  • Florian Kerber, ST-ECF, European Southern
    Observatory, Garching
  • Gerard Lemson, GAVO, Max-Planck-Institut für
    extraterr. Physik, Garching
  • Alberto Micol, ST-ECF, European Southern
    Observatory, Garching
  • Roberto Mignani, European Southern Observatory,
    Garching
  • Thomas Rauch, Institut für Astronomie und
    Astrophysik, Universität Tübingen
  • Wolfgang Voges, GAVO, Max-Planck-Institut für
    extraterr. Physik, Garching

2
Overview
  • We report progress on a new Web service for
    automated object classification which comprises
    four major steps
  • An input list of sky-positions is used for
    querying multiple distributed catalogues covering
    different wavelength intervals. The sources
    returned are spatially matched using a
    probabilistic method.
  • A list of observed spectral energy distributions
    (SEDs) is assembled.
  • The theoretical SEDs are prepared using a library
    of model spectra.
  • The obsrvational SEDs are submitted to a
    classifier that uses the theoretical SEDs for
    template matching. For each observed SED the
    three best-matching theoretical SEDs are
    identified.
  • A science case has been selected for testing the
    capabilities of the Web service described.
  • This work has been carried out as a collaboration
    between the AVO (http//www.euro-vo.org) and GAVO
    (http//www.g-vo.org) projects.

3
Scientific Motivation
  • Many scientific investigations benefit from a
    multi-spectral (pan-chromatic) view of the
    universe.
  • This idea has played a vital role at the very
    beginning of the virtual observatory movement.
  • Some areas of interest
  • panchromatic mining for quasars a key-stone
    science application of the US-American NVO.
  • AGN research start with a list of AGN
    candidates collect all photometric data from
    distributed catalogues covering the full spectral
    range classify the AGN-zoo (type I, II, BL Lac,
    etc.)
  • planetary nebulae, isolated neutron stars, brown
    dwarfs, CVs

4
Catalogue Query and Matching
  • The catalogue query and matching process is
    itself a three-stage process
  • The user uploads an input list of sky-positions
  • The user selects the catalogues of interest. For
    each catalogue a deterministic matching service
    provided by CDS/Vizier is invoked that, for each
    object in the input list, carries out a simple
    cone search.
  • The result is a set of match lists, one per
    catalogue. Often the matching results are
    ambiguous.
  • Finally, the matcher fuses the match-lists into a
    single master list using GAVOs fuzzy matcher
    algorithm.
  • The resulting fused master list contains all
    plausible match candidates. Each entry in this
    list contains at most one source from each
    catalogue.

5
Catalogue Selection
6
Match-List before XMatch
7
Fused Master List (after XMatch)
8
Assembly of the Observational SEDs
  • The SED-assembly process for the observational
    data takes several steps
  • For each match-candidate the photometric
    measurements are collected from the contributing
    catalogues.
  • Since a given catalogue may not have a matching
    source, often the photometric measurements are
    null. Even when the catalogue has a matching
    source there may still be no photometric
    measurement in a given passband.
  • Next, unit conversions are applied to the
    photometric measurements in order to form a
    spectral energy distribution (SED).
  • The resulting (usually incomplete) SEDs make up
    the features which the classifier operates on.

9
Observation Data Preview
10
Preparation of the Theoretical SEDs
  • For the subsequent classification stage, the
    theoretical data has to be brought into the
    observational space.
  • We have used a grid of stellar model atmosphere
    spectra (Thomas Rauch, http//astro.uni-tuebingen.
    de/rauch/). The theoretical spectra have a much
    higher resolution than the observational broad
    band SEDs the former therefore have been
    downsampled to match the latter.
  • In order to match the low spectral resolution of
    the observations, the theoretical flux was
    extracted at the central wavelength for each of
    the 7 wavebands, i.e. Johnson B, V, R, I, H, J,
    K. (In principle one would have to convert the
    theoretical spectra using the proper sensitivity
    curves of the filters.)
  • No correction was applied for interstellar
    extinction

11
Library Data Preview
12
Library Data View
13
Supervised Classification
  • The list of observational SEDs is submitted to a
    supervised classifier.
  • The classifier uses the library of theoretical
    SEDs for template matching.
  • In principle any user-supplied library may be
    used we only require that the uploaded
    theoretical SEDs comprise the same features as
    those in the observed SEDs.
  • The SED classifier currently uses a simple
    deterministic nearest neighbour (NN) algorithm
    which uses the Euclidean distance in feature
    space. For each observed SED the NN-classifier
    identifies the three best-matching theoretical
    SEDs.
  • User choices the features to use in the
    classification the method for estimating the
    scaling factor the number of best matches to
    report

14
SED Classifier Central
15
Classification View
16
Quick-look Graphics
  • For an easy assessment of the results we decided
    to also provide quick-look on-line graphics.
  • For each observational SED the chart contains
  • the observed SED and
  • an overplot of the three best matching
    theoretical SEDs.
  • We use the JFreeChart graphics package, wrapped
    in the Cewolf library for use within JavaServer
    Pages (JSPs). Fortunately, only a few lines of
    code are necessary in order to bring up a chart.

17
Quick-look Chart
18
Reporting
  • Classification results are reported in a
    classification table.
  • the ID of the observational SED,
  • the No of (non-null) features contributing to the
    classification, and
  • for each of the best three matches
  • the ID of the matching theoretical SED,
  • the dissimilarity between the observed and the
    matching theoretical SED, and
  • a scaling factor (the distance modulus).
  • The full complement of pair-wise dissimilarities
    is also reported.
  • This table can become very large, since it scales
    with the number of observational SEDs times the
    number of theoretical SEDs.

19
Status
  • The SED classifier is implemented in pure Java
  • as a standard J2EE Web Application
  • We successfully use
  • the JavaServer Faces (JSF) technology, which
    offers a server- and a client-side
    state-mechanism,
  • We extended it by a custom JSF-tag library for
    table input and output.
  • an embedded 100 Java database (HSQLDB) for
    feature selection and reporting, and
  • the GAVO table utility package (similar to
    AstroGrids Topcat/STIL package).

20
Conclusions
  • A proper handling of missing data (null values)
    is essential for this kind of application.
  • Quick-look graphics are helpful to let the user
    assess the classification results.
  • We need a statistical classifier to adequately
    handle the photometric uncertainties.
  • We need to validate the classifier.
  • This is work-in-progress. We are relying on the
    CDS/Vizier matching services, which we extend.

21
Selected References
  • Adorf, H.-M. Classification of Low-Resolution
    Stellar Spectra via Template Matching -- A
    Simulation Study. in Workshop "Data Analysis in
    Astronomy II". 1986. Erice, Italy Plenum Press,
    New York, USA.
  • Kerber F., Mignani R.P., Guglielmetti F., Wicenec
    A., Galactic Planetary Nebulae and their central
    stars. I. An accurate and homogeneous set of
    coordinates. Astron. Astrophys. 408, 1029 (2003)
  • McGlynn, T.A. , A.A. Suchkov, E.L. Winter, R.J.
    Hanisch, R.L. White, F. Ochsenbein, S. Derriere,
    W. Voges, and M.F. Corcoran, Automated
    Classification of ROSAT Sources Using
    Heterogeneous Multi-wavelength Source Catalogs,
    Astrophys. J. (submitted), 2004.
  • Padovani, P., Allen, M. G., Rosati, P., Walton,
    N. A. 2004, Discovery of optically faint obscured
    quasars with Virtual Observatory tools, Astronomy
    Astrophys. 424, 545.
  • Rauch, T., Grids of Synthetic Stellar Fluxes.
    2004, Thomas Rauch. http//astro.uni-tuebingen.de/
    rauch/.
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