Derived from non-linear signal processing strategies common to biological systems, neural network algorithms generalise classical data analysis techniques, e.g. Fourier analysis, Wiener filtering, and vector clustering algorithms. Conversely, multifactor analysis tools such as principal component analysis can function in a manner analogous to that of an unsupervised neural network. We have explored the use of principal component analysis for data pre-processing prior to classification of stellar spectra with a non-linear neural network. The strategy significantly enhances classification replicability, network stability, and convergence
With the rapid growth in astronomical spectra produced by large sky survey telescopes, traditional m...
Abstract. We have explored two automated classication methods: supervised classication using Articia...
The objectives of this paper are to demonstrate the use of a combination of artificial neural networ...
Derived from non-linear signal processing strategies common to biological systems, neural network al...
We are working on a project to automate the multi-parameter classification of stellar spectra using ...
We investigate the application of neural networks to the automation of MK spec- tral classification....
We attempt to de-mistify Artificial Neural Networks (ANNs) by considering special cases which are re...
Context. As part of a project aimed at deriving extinction-distances for thirty-five planetary nebul...
We briefly review the work of the past decade on automated classification of stellar spectra and dis...
We describe an Artificial Neural Network (ANN) approach to classification of galaxy images and spect...
The use of artificial neural networks (ANNs) as a classifier of digital spectra is investigated. Usi...
Abstract: This paper presents a comparative study of the sensibility of knowledge-based systems and ...
[1] Methods in multivariate statistical analysis are essential for working with large amounts of geo...
We briefly review the work of the past decade on automated classification of stellar spectra and di...
The quantitative issue of artificial neural nrtworks ( ANN) had been addressed by using examples o...
With the rapid growth in astronomical spectra produced by large sky survey telescopes, traditional m...
Abstract. We have explored two automated classication methods: supervised classication using Articia...
The objectives of this paper are to demonstrate the use of a combination of artificial neural networ...
Derived from non-linear signal processing strategies common to biological systems, neural network al...
We are working on a project to automate the multi-parameter classification of stellar spectra using ...
We investigate the application of neural networks to the automation of MK spec- tral classification....
We attempt to de-mistify Artificial Neural Networks (ANNs) by considering special cases which are re...
Context. As part of a project aimed at deriving extinction-distances for thirty-five planetary nebul...
We briefly review the work of the past decade on automated classification of stellar spectra and dis...
We describe an Artificial Neural Network (ANN) approach to classification of galaxy images and spect...
The use of artificial neural networks (ANNs) as a classifier of digital spectra is investigated. Usi...
Abstract: This paper presents a comparative study of the sensibility of knowledge-based systems and ...
[1] Methods in multivariate statistical analysis are essential for working with large amounts of geo...
We briefly review the work of the past decade on automated classification of stellar spectra and di...
The quantitative issue of artificial neural nrtworks ( ANN) had been addressed by using examples o...
With the rapid growth in astronomical spectra produced by large sky survey telescopes, traditional m...
Abstract. We have explored two automated classication methods: supervised classication using Articia...
The objectives of this paper are to demonstrate the use of a combination of artificial neural networ...