Statistics – Applications
Scientific paper
Oct 1997
adsabs.harvard.edu/cgi-bin/nph-data_query?bibcode=1997spie.3164..110o&link_type=abstract
Proc. SPIE Vol. 3164, p. 110-119, Applications of Digital Image Processing XX, Andrew G. Tescher; Ed.
Statistics
Applications
1
Scientific paper
Current efforts to perform automatic galaxy classification using artificial neural network image classifiers are reviewed. For both digitized photographic Schmidt plate data and newly obtained WFPC2 imagery from the Hubble Space Telescope, a variety of 2D photometric parameter space produce a segregation of Hubble types. Through the use of hidden node layers. a neural network is capable of mapping complicated, highly nonlinear data space. This powerful technique is used to map a multivariate photometric parameter space to the revised Hubble system of galaxy classification.
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