Wide field imaging - I. Applications of neural networks to object detection and star/galaxy classification

被引:62
作者
Andreon, S
Gargiulo, G
Longo, G
Tagliaferri, R
Capuano, N
机构
[1] Osservatorio Astron Capodimonte, I-80131 Naples, Italy
[2] Univ Salerno, Fac Sci, I-84081 Baronissi, Salerno, Italy
[3] IIASS ER Caianiello, I-84019 Salerno, Italy
[4] Univ Salerno, DMI, I-84081 Baronissi, Salerno, Italy
[5] INFM, Unita Salerno, I-84081 Baronissi, Salerno, Italy
关键词
methods : data analysis; techniques : image processing; catalogues;
D O I
10.1046/j.1365-8711.2000.03700.x
中图分类号
P1 [天文学];
学科分类号
0704 ;
摘要
Astronomical wide-field imaging performed with new large-format CCD detectors poses data reduction problems of unprecedented scale, which are difficult to deal with using traditional interactive tools. We present here NEXT (Neural Extractor), a new neural network (NN) based package capable of detecting objects and performing both deblending and start galaxy classification in an automatic way. Traditionally, in astronomical images, objects are first distinguished from the noisy background by searching for sets of connected pixels having brightnesses above a given threshold; they are then classified as stars or as galaxies through diagnostic diagrams having variables chosen according to the astronomer's taste and experience. In the extraction step, assuming that images are well sampled, NEXT requires only the simplest a priori definition of 'what an object is' (i.e. it keeps all structures composed of more than one pixel) and performs the detection via an unsupervised NN, approaching detection as a clustering problem that has been thoroughly studied in the artificial intelligence literature. The first part of the NEXT procedure consists of an optimal compression of the redundant information contained in the pixels via a mapping from pixel intensities to a subspace individualized through principal component analysis. At magnitudes fainter than the completeness limit, stars are usually almost indistinguishable from galaxies, and therefore the parameters characterizing the two classes do not lie in disconnected subspaces, thus preventing the use of unsupervised methods. We therefore adopted a supervised NN (i.e. a NN that first finds the rules to classify objects from examples and then applies them to the whole data set). In practice, each object is classified depending on its membership of the regions mapping the input feature space in the training set. In order to obtain an objective and reliable classification, instead of using an arbitrarily defined set of features we use a NN to select the most significant features among the large number of measured ones, and then we use these selected features to perform the classification task. In order to optimize the performance of the system, we implemented and tested several different models of NN, The comparison of the NEXT performance with that of the best detection and classification package known to the authors (SEXTRACTOR) shows that NEXT is at least as effective as the best traditional packages.
引用
收藏
页码:700 / 716
页数:17
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