Journal article
Data-driven modelling of visual receptive fields: comparison between the generalized quadratic model and the nonlinear input model
Ali Almasi, Shi H Sun, Young Jun Jung, Michael Ibbotson, Hamish Meffin
Journal of Neural Engineering | IOP Publishing | Published : 2024
Abstract
Objective: Neurons in primary visual cortex (V1) display a range of sensitivity in their response to translations of their preferred visual features within their receptive field: from high specificity to a precise position through to complete invariance. This visual feature selectivity and invariance is frequently modeled by applying a selection of linear spatial filters to the input image, that define the feature selectivity, followed by a nonlinear function that combines the filter outputs, that defines the invariance, to predict the neural response. We compare two such classes of model, that are both popular and parsimonious, the generalized quadratic model (GQM) and the nonlinear input m..
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Grants
Awarded by National Health and Medical Research Council
Awarded by Australian Research Council Centre of Excellence for Integrative Brain Function
Funding Acknowledgements
This work was supported by the Australian Research Council Centre of Excellence for Integrative Brain Function (CE140100007), the National Health and Medical Research Council (GNT1106390), and Lions Club of Victoria.