Title :
Processing CsI(Tl) 2-D matrices by means of neural networks and Markov random fields
Author :
Alderighi, M. ; Anzalone, A. ; Cardella, G. ; De Filippo, E. ; Geraci, E. ; Giustolisi, F. ; Guazzoni, P. ; Lanzalone, G. ; Lanzano, G. ; Pagano, Annachiara ; Papa, M. ; Pirrone, S. ; Politi, G. ; Porto, F. ; Russo, S. ; Sechi, G.R. ; Sperduto, L. ; Zetta
Author_Institution :
Ist. di Fisica Cosmica e Tecnologie Relative, CNR, Milan
fDate :
8/1/2002 12:00:00 AM
Abstract :
This paper is concerned with the automatic analysis of data coming from the multidetector array CHIMERA, used in nuclear physics at intermediate energies. Each of Chimera´s detection cells is a telescope made of a ΔE silicon detector and a CsI(Tl) crystal, thick enough to stop all the charged light particles. The signals produced in the CsI(Tl) scintillators can be subdivided into two components-fast and slow. These data are collected in the form of bi-dimensional matrices (Fast-Slow matrices), particularly important for light particle identification. The proposed approach consists in applying image processing techniques. In particular, Grossberg´s pre-attentive neural networks are used as a first step in order to isolate the regions of physical interest in the matrices and to roughly identify the directions depicted by the most intense lines; a successive step of filtering based on Markov random fields is then performed.
Keywords :
Markov processes; high energy physics instrumentation computing; neural nets; solid scintillation detectors; CHIMERA; CsI(Tl) deteotor; CsI:Tl; Markov random fields; Si; Si detector; data processing; fast component; filtering; neural networks; slow component; Data analysis; Data mining; Detectors; Markov random fields; Neural networks; Nuclear physics; Object detection; Silicon; Telescopes; Transmission line matrix methods;
Journal_Title :
Nuclear Science, IEEE Transactions on
DOI :
10.1109/TNS.2002.801704