Literature DB >> 23340243

Dynamic evolving spiking neural networks for on-line spatio- and spectro-temporal pattern recognition.

Nikola Kasabov1, Kshitij Dhoble, Nuttapod Nuntalid, Giacomo Indiveri.   

Abstract

On-line learning and recognition of spatio- and spectro-temporal data (SSTD) is a very challenging task and an important one for the future development of autonomous machine learning systems with broad applications. Models based on spiking neural networks (SNN) have already proved their potential in capturing spatial and temporal data. One class of them, the evolving SNN (eSNN), uses a one-pass rank-order learning mechanism and a strategy to evolve a new spiking neuron and new connections to learn new patterns from incoming data. So far these networks have been mainly used for fast image and speech frame-based recognition. Alternative spike-time learning methods, such as Spike-Timing Dependent Plasticity (STDP) and its variant Spike Driven Synaptic Plasticity (SDSP), can also be used to learn spatio-temporal representations, but they usually require many iterations in an unsupervised or semi-supervised mode of learning. This paper introduces a new class of eSNN, dynamic eSNN, that utilise both rank-order learning and dynamic synapses to learn SSTD in a fast, on-line mode. The paper also introduces a new model called deSNN, that utilises rank-order learning and SDSP spike-time learning in unsupervised, supervised, or semi-supervised modes. The SDSP learning is used to evolve dynamically the network changing connection weights that capture spatio-temporal spike data clusters both during training and during recall. The new deSNN model is first illustrated on simple examples and then applied on two case study applications: (1) moving object recognition using address-event representation (AER) with data collected using a silicon retina device; (2) EEG SSTD recognition for brain-computer interfaces. The deSNN models resulted in a superior performance in terms of accuracy and speed when compared with other SNN models that use either rank-order or STDP learning. The reason is that the deSNN makes use of both the information contained in the order of the first input spikes (which information is explicitly present in input data streams and would be crucial to consider in some tasks) and of the information contained in the timing of the following spikes that is learned by the dynamic synapses as a whole spatio-temporal pattern.
Copyright © 2012 Elsevier Ltd. All rights reserved.

Mesh:

Year:  2012        PMID: 23340243     DOI: 10.1016/j.neunet.2012.11.014

Source DB:  PubMed          Journal:  Neural Netw        ISSN: 0893-6080


  17 in total

1.  Design of MRI structured spiking neural networks and learning algorithms for personalized modelling, analysis, and prediction of EEG signals.

Authors:  Samaneh Alsadat Saeedinia; Mohammad Reza Jahed-Motlagh; Abbas Tafakhori; Nikola Kasabov
Journal:  Sci Rep       Date:  2021-06-08       Impact factor: 4.379

2.  Racing to learn: statistical inference and learning in a single spiking neuron with adaptive kernels.

Authors:  Saeed Afshar; Libin George; Jonathan Tapson; André van Schaik; Tara J Hamilton
Journal:  Front Neurosci       Date:  2014-11-25       Impact factor: 4.677

3.  Optimal Localist and Distributed Coding of Spatiotemporal Spike Patterns Through STDP and Coincidence Detection.

Authors:  Timothée Masquelier; Saeed R Kheradpisheh
Journal:  Front Comput Neurosci       Date:  2018-09-18       Impact factor: 2.380

4.  A Retinotopic Spiking Neural Network System for Accurate Recognition of Moving Objects Using NeuCube and Dynamic Vision Sensors.

Authors:  Lukas Paulun; Anne Wendt; Nikola Kasabov
Journal:  Front Comput Neurosci       Date:  2018-06-12       Impact factor: 2.380

Review 5.  Trends in Compressive Sensing for EEG Signal Processing Applications.

Authors:  Dharmendra Gurve; Denis Delisle-Rodriguez; Teodiano Bastos-Filho; Sridhar Krishnan
Journal:  Sensors (Basel)       Date:  2020-07-02       Impact factor: 3.576

6.  STDP Allows Close-to-Optimal Spatiotemporal Spike Pattern Detection by Single Coincidence Detector Neurons.

Authors:  Timothée Masquelier
Journal:  Neuroscience       Date:  2017-06-29       Impact factor: 3.590

7.  Spiking Neural Network Modelling Approach Reveals How Mindfulness Training Rewires the Brain.

Authors:  Zohreh Doborjeh; Maryam Doborjeh; Tamasin Taylor; Nikola Kasabov; Grace Y Wang; Richard Siegert; Alex Sumich
Journal:  Sci Rep       Date:  2019-04-23       Impact factor: 4.379

8.  A Spiking Neural Network in sEMG Feature Extraction.

Authors:  Sergey Lobov; Vasiliy Mironov; Innokentiy Kastalskiy; Victor Kazantsev
Journal:  Sensors (Basel)       Date:  2015-11-03       Impact factor: 3.576

9.  Modelling Peri-Perceptual Brain Processes in a Deep Learning Spiking Neural Network Architecture.

Authors:  Zohreh Gholami Doborjeh; Nikola Kasabov; Maryam Gholami Doborjeh; Alexander Sumich
Journal:  Sci Rep       Date:  2018-06-11       Impact factor: 4.379

10.  Capacity, Fidelity, and Noise Tolerance of Associative Spatial-Temporal Memories Based on Memristive Neuromorphic Networks.

Authors:  Dmitri Gavrilov; Dmitri Strukov; Konstantin K Likharev
Journal:  Front Neurosci       Date:  2018-03-28       Impact factor: 4.677

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