Title :
An advanced neuron model for optimizing the SIREN network architecture
Author :
Alderighi, Monica ; Angelo, Sergio D. ; Ovidio, Francesco D. ; Gummat, Emiliano L. ; Sechi, Giacomo R.
Author_Institution :
Istituto di Fisica Cosmica e Tecnologie Realtive, CNR, Milano, Italy
Abstract :
The paper presents a computational system based on a synchronous feedback neural network for the on-line event processing of a photon counting intensified CCD. The project is based on a neuron model that improves the one already defined for the SIgnal REcognition Network (SIREN) system and on a suitable network architecture. As far as the neuron is concerned, a new equation for network dynamics is envisaged, that allows to reduce the number of cycles needed for event identification. As far as the architecture is concerned, we focus on the definition of a network having less neurons than SIREN while maintaining the same performance. An hypothesis of network architecture and a performance comparison between the two neural models are given in the paper
Keywords :
neural net architecture; photon counting; signal processing; SIREN network architecture; network architecture; neuron model; on-line event processing; performance comparison; photon counting; synchronous feedback neural network; Charge coupled devices; Clouds; Electrons; Hardware; Neural networks; Neurofeedback; Neurons; Optical fibers; Optical signal processing; Phosphors;
Conference_Titel :
Algorithms & Architectures for Parallel Processing, 1996. ICAPP 96. 1996 IEEE Second International Conference on
Print_ISBN :
0-7803-3529-5
DOI :
10.1109/ICAPP.1996.562875