An Orientation Selective Neural Network for Pattern Identification in Particle Detectors
Abramowicz, Halina, Horn, David, Naftaly, Ury, Sahar-Pikielny, Carmit
–Neural Information Processing Systems
Constructing amulti-layered neural network with fixed architecture which implements orientation selectivity, we define output elements corresponding todifferent orientations, which allow us to make a selection decision. The algorithm takes into account the granularity of the lattice as well as the presence of noise and inefficiencies. The method is applied to a sample of data collected with the ZEUS detector at HERA in order to identify cosmic muons that leave a linear pattern of signals in the segmented calorimeter. A two dimensional representation of the relevant part of the detector is used. The algorithm performs very well. Given its architecture, this system becomes a good candidate for fast pattern recognition in parallel processing devices.
Neural Information Processing Systems
Dec-31-1997