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..

View full abstract

Grants

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.