With the rapid growth in astronomical spectra produced by large sky survey telescopes, traditional manual classification processes can no longer fulfill the requirements of precision and efficiency of spectral classification. There is an urgent need to employ machine learning approaches to conduct automated spectral classification tasks. Feature extraction is a critical step which has a great impact on any classification result. In this paper, a novel gradient-based method together with principal component analysis is proposed for the extraction of partial features of stellar spectra, that is, a feature vector indicating obvious local changes in data, which corresponds to the element line positions in the spectra. Furthermore, a general fea...
We investigate the application of neural networks to the automation of MK spec- tral classification....
This thesis was carried out in two parts. The stellar spectral data was used from the Gaia-ESO surve...
Context. Optical and infrared variability surveys produce a large number of high quality light curve...
Context. As part of a project aimed at deriving extinction-distances for thirty-five planetary nebul...
Lightyears beyond the Planet Earth there exist plenty of unknown and unexplored stars and Galaxies t...
We are working on a project to automate the multi-parameter classification of stellar spectra using ...
New generation large-aperture telescopes, multi-object spectrographs, and large format detectors are...
We have initiated a project to classify stellar spectra automatically from high-dispersion objective...
Information on the spectral types of stars is of great interest in view of the exploitation of space...
Derived from non-linear signal processing strategies common to biological systems, neural network al...
We briefly review the work of the past decade on automated classification of stellar spectra and dis...
We briefly review the work of the past decade on automated classification of stellar spectra and di...
Classification in astrophysics is a fundamental process, especially when it is necessary to understa...
In this paper we show how machine learning methods can be effectively applied to the problem of auto...
Abstract: This paper presents a comparative study of the sensibility of knowledge-based systems and ...
We investigate the application of neural networks to the automation of MK spec- tral classification....
This thesis was carried out in two parts. The stellar spectral data was used from the Gaia-ESO surve...
Context. Optical and infrared variability surveys produce a large number of high quality light curve...
Context. As part of a project aimed at deriving extinction-distances for thirty-five planetary nebul...
Lightyears beyond the Planet Earth there exist plenty of unknown and unexplored stars and Galaxies t...
We are working on a project to automate the multi-parameter classification of stellar spectra using ...
New generation large-aperture telescopes, multi-object spectrographs, and large format detectors are...
We have initiated a project to classify stellar spectra automatically from high-dispersion objective...
Information on the spectral types of stars is of great interest in view of the exploitation of space...
Derived from non-linear signal processing strategies common to biological systems, neural network al...
We briefly review the work of the past decade on automated classification of stellar spectra and dis...
We briefly review the work of the past decade on automated classification of stellar spectra and di...
Classification in astrophysics is a fundamental process, especially when it is necessary to understa...
In this paper we show how machine learning methods can be effectively applied to the problem of auto...
Abstract: This paper presents a comparative study of the sensibility of knowledge-based systems and ...
We investigate the application of neural networks to the automation of MK spec- tral classification....
This thesis was carried out in two parts. The stellar spectral data was used from the Gaia-ESO surve...
Context. Optical and infrared variability surveys produce a large number of high quality light curve...