DocumentCode
1264060
Title
Biologically Inspired Spiking Neurons: Piecewise Linear Models and Digital Implementation
Author
Soleimani, Hamid ; Ahmadi, Arash ; Bavandpour, Mohammad
Author_Institution
Dept. of Electr. Eng., Razi Univ., Kermanshah, Iran
Volume
59
Issue
12
fYear
2012
Firstpage
2991
Lastpage
3004
Abstract
There has been a strong push recently to examine biological scale simulations of neuromorphic algorithms to achieve stronger inference capabilities. This paper presents a set of piecewise linear spiking neuron models, which can reproduce different behaviors, similar to the biological neuron, both for a single neuron as well as a network of neurons. The proposed models are investigated, in terms of digital implementation feasibility and costs, targeting large scale hardware implementation. Hardware synthesis and physical implementations on FPGA show that the proposed models can produce precise neural behaviors with higher performance and considerably lower implementation costs compared with the original model. Accordingly, a compact structure of the models which can be trained with supervised and unsupervised learning algorithms has been developed. Using this structure and based on a spike rate coding, a character recognition case study has been implemented and tested.
Keywords
bio-inspired materials; character recognition; encoding; field programmable gate arrays; neural nets; unsupervised learning; FPGA; biological neuron; biological scale simulations; biologically inspired spiking neurons; character recognition; digital implementation; hardware synthesis; inference capabilities; large scale hardware implementation; neural behaviors; neuromorphic algorithms; neurons network; piecewise linear spiking neuron models; spike rate coding; supervised learning algorithms; unsupervised learning algorithms; Biological system modeling; Computational modeling; Field programmable gate arrays; Integrated circuit modeling; Mathematical model; Neurons; Field programmable gate array (FPGA); piecewise linear model; spike rate learning; spiking neural networks;
fLanguage
English
Journal_Title
Circuits and Systems I: Regular Papers, IEEE Transactions on
Publisher
ieee
ISSN
1549-8328
Type
jour
DOI
10.1109/TCSI.2012.2206463
Filename
6268301
Link To Document