Bibcode
Serra-Ricart, M.; Gaitan, V.; Garrido, L.; Perez-Fournon, I.
Bibliographical reference
Astronomy and Astrophysics Supplement, v.115, p.195
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1
1996
Citations
5
Refereed citations
5
Description
We propose a method to classify faint objects from digital astronomical
images based on a layered feedforward neural network which has been
trained by the backpropagation procedure (Werbos 1974). An "academic"
example showing that artificial neural network method behaves as a
Bayesian classifier is discussed. A comparison of the classification
results obtained from simulated data by the neural network classifier
and by the well-established resolution classifier (Valdes 1982a) is
performed in order to assess the reliability and limitations of the
neural network classifier. A similar behaviour, up to the same faintness
limit to which the resolution classifier works, is found in both
classifiers. The method proposed in this paper offers a clear advantage,
in terms of speed, over traditional methods in the classification of
large samples of data; it allows a uniform and objective classification
of large amounts of astronomical data in short computing times, which is
useful for the analysis of astronomical observations with high data
rates.