Deep learning in spiking neural networks

A Tavanaei, M Ghodrati, SR Kheradpisheh… - Neural networks, 2019 - Elsevier
In recent years, deep learning has revolutionized the field of machine learning, for computer
vision in particular. In this approach, a deep (multilayer) artificial neural network (ANN) is …

Connectivity concepts in neuronal network modeling

J Senk, B Kriener, M Djurfeldt, N Voges… - PLoS computational …, 2022 - journals.plos.org
Sustainable research on computational models of neuronal networks requires published
models to be understandable, reproducible, and extendable. Missing details or ambiguities …

Bio-inspired digit recognition using reward-modulated spike-timing-dependent plasticity in deep convolutional networks

M Mozafari, M Ganjtabesh, A Nowzari-Dalini… - Pattern recognition, 2019 - Elsevier
The primate visual system has inspired the development of deep artificial neural networks,
which have revolutionized the computer vision domain. Yet these networks are much less …

BS4NN: Binarized spiking neural networks with temporal coding and learning

SR Kheradpisheh, M Mirsadeghi… - Neural Processing …, 2022 - Springer
We recently proposed the S4NN algorithm, essentially an adaptation of backpropagation to
multilayer spiking neural networks that use simple non-leaky integrate-and-fire neurons and …

Analyzing time-to-first-spike coding schemes: A theoretical approach

L Bonilla, J Gautrais, S Thorpe… - Frontiers in …, 2022 - frontiersin.org
Spiking neural networks (SNNs) using time-to-first-spike (TTFS) codes, in which neurons fire
at most once, are appealing for rapid and low power processing. In this theoretical paper, we …

Classifying melanoma skin lesions using convolutional spiking neural networks with unsupervised stdp learning rule

Q Zhou, Y Shi, Z Xu, R Qu, G Xu - IEEE Access, 2020 - ieeexplore.ieee.org
Deep learning methods have made some achievements in the automatic skin lesion
recognition, but there are still some problems such as limited training samples, too …

SpikeSEG: Spiking segmentation via STDP saliency mapping

P Kirkland, G Di Caterina, J Soraghan… - … Joint Conference on …, 2020 - ieeexplore.ieee.org
Taking inspiration from the structure and behaviour of the human visual system and using
the Transposed Convolution and Saliency Mapping methods of Convolutional Neural …

Spike time displacement-based error backpropagation in convolutional spiking neural networks

M Mirsadeghi, M Shalchian, SR Kheradpisheh… - Neural Computing and …, 2023 - Springer
In this paper, we introduce a supervised learning algorithm, which avoids backward
recursive gradient computation, for training deep convolutional spiking neural networks …

EvtSNN: Event-driven SNN simulator optimized by population and pre-filtering

L Mo, Z Tao - Frontiers in Neuroscience, 2022 - frontiersin.org
Recently, spiking neural networks (SNNs) have been widely studied by researchers due to
their biological interpretability and potential application of low power consumption. However …

Perception understanding action: adding understanding to the perception action cycle with spiking segmentation

P Kirkland, G Di Caterina, J Soraghan… - Frontiers in …, 2020 - frontiersin.org
Traditionally the Perception Action cycle is the first stage of building an autonomous robotic
system and a practical way to implement a low latency reactive system within a low Size …