Open AccessJournal Article
Introduction to spiking neural networks: Information processing, learning and applications.
Filip Ponulak,Andrzej Kasiński +1 more
344
TL;DR: This paper summarizes basic properties of spiking neurons and spiking networks, and focuses, specifically, on models of spike-based information coding, synaptic plasticity and learning.
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Abstract: The concept that neural information is encoded in the firing rate of neurons has been the dominant paradigm in neurobiology for many years. This paradigm has also been adopted by the theory of artificial neural networks. Recent physiological experiments demonstrate, however, that in many parts of the nervous system, neural code is founded on the timing of individual action potentials. This finding has given rise to the emergence of a new class of neural models, called spiking neural networks. In this paper we summarize basic properties of spiking neurons and spiking networks. Our focus is, specifically, on models of spike-based information coding, synaptic plasticity and learning. We also survey real-life applications of spiking models. The paper is meant to be an introduction to spiking neural networks for scientists from various disciplines interested in spike-based neural processing.
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Citations
A Reservoir-based Convolutional Spiking Neural Network for Gesture Recognition from DVS Input
Arun M. George,Dighanchal Banerjee,Sounak Dey,Arijit Mukherjee,Balamurali P +4 more
- 19 Jul 2020
TL;DR: This work presents a novel spiking neural network constituting multiple convolutional layers and a reservoir layer to extract spatial and temporal features respectively from human gesture videos captured with DVS camera and claims that the performance of the network is better in terms of accuracy vs. learning parameters ratio when compared to other networks.
40
Spike Sequence Learning in a Photonic Spiking Neural Network Consisting of VCSELs-SA With Supervised Training
TL;DR: The numerical results show that, the photonic SNN successfully reproduces a desirable output spike sequence in response to a spatiotemporal input spike pattern by means of the iteration algorithm to update synaptic weights continuously.
40
Cell-Like Spiking Neural P Systems With Request Rules
TL;DR: The results show that the decrease of computation power caused by removing the internal functioning of producing more spikes and replicating spikes can be compensated by request rules, which suggests that the communication between a cell and the environment is an essential ingredient of systems in terms of computationPower.
39
Organic materials and devices for brain-inspired computing: From artificial implementation to biophysical realism
TL;DR: An overview of the basic functional operation of the brain and its artificial counterparts, with a particular focus on organic materials and devices.
Direct learning-based deep spiking neural networks: a review
Yu-Zhu Guo,Xuhui Huang,Zhe Ma +2 more
TL;DR: A comprehensive survey of direct learning-based deep spiking neural networks is presented in this paper , mainly categorized into accuracy improvement methods, efficiency improvement methods and temporal dynamics utilization methods, and also divide these categorizations into finer granularities further to better organize and introduce them.
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TL;DR: The psychology classic "Walden Two" as mentioned in this paper is a detailed study of scientific theories of human nature and the possible ways in which human behavior can be predicted and controlled from one of the most influential behaviorists of the twentieth century.
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