Journal article
Spatiotemporal multi-resolution approximation of the Amari type neural field model
P Aram, DR Freestone, M Dewar, K Scerri, V Jirsa, DB Grayden, V Kadirkamanathan
Neuroimage | Published : 2013
Abstract
Neural fields are spatially continuous state variables described by integro-differential equations, which are well suited to describe the spatiotemporal evolution of cortical activations on multiple scales. Here we develop a multi-resolution approximation (MRA) framework for the integro-difference equation (IDE) neural field model based on semi-orthogonal cardinal B-spline wavelets. In this way, a flexible framework is created, whereby both macroscopic and microscopic behavior of the system can be represented simultaneously. State and parameter estimation is performed using the expectation maximization (EM) algorithm. A synthetic example is provided to demonstrate the framework. © 2012 Elsev..
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Awarded by James S. McDonnell Foundation
Funding Acknowledgements
The research reported herein was partly supported by the Brain Network Recovery Group through the James S. McDonnell Foundation and the FP7-ICT BrainScales. This research was also partly supported by the Australian Research Council (Linkage Project LP100200571) and Engineering and Physical Sciences Research Council, UK (EP/H00453X/1 and EP/G015627/1). The Bionics Institute acknowledges the support it receives from the Victorian State Government through the Operational Infrastructure Support Program.