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
Integrate-and-Fire Neuron With Li-Based Electrochemical Random Access Memory Using Native Linear Current Integration Characteristics
TL;DR: This study presents an integrate-and-fire (I&F) neuron using a Li-based electrochemical random access memory (Li-ECRAM) to achieve exceptional area efficiency and low-power neuromorphic computing.
Multilayer Magnetic Domain Wall MTJ-based Spiking Neural Network
Aijaz H. Lone,Daniel N. Rahimi,Hossein Fariborzi,Gianluca Setti +3 more
- 08 Jul 2024
TL;DR: Researchers develop a multilayer spintronic neuromorphic device using magnetic domain wall dynamics, achieving 96% accuracy in classifying the MNIST dataset with a 3-layer spiking neural network, paving the way for energy-efficient neuromorphic computing.
Local Delay Plasticity Supports Generalized Learning in Spiking Neural Networks
TL;DR: A novel local learning rule for spiking neural networks induces plasticity in spike propagation times, improving classification accuracy and generalizability by encoding inputs via latency coding and decoding outputs via matching spiking activity patterns.
Brain-inspired spiking neural network controller for a neurorobotic whisker system
Alberto Antonietti,Alberto Antonietti,Alice Geminiani,Edoardo Negri,Edoardo Negri,Egidio D'Angelo,Claudia Casellato,Alessandra Pedrocchi +7 more
TL;DR: In this article, a bioinspired spiking neural network model of the mouse whisker system was developed, which was embedded in a virtual mouse robot, exploiting the Neurorobotics Platform, a simulation platform offering a virtual environment to develop and test robots driven by braininspired controllers.
Sneaky Spikes: Uncovering Stealthy Backdoor Attacks in Spiking Neural Networks with Neuromorphic Data
13 Feb 2023
TL;DR: In this paper , the authors explore backdoor triggers within neuromorphic data that can manipulate their position and color, providing a broader scope of possibilities than conventional triggers in domains like images, achieving an attack success rate of up to 100% while maintaining a negligible impact on clean accuracy.
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