Computational modelling of salamander retinal ganglion cells using machine learning approaches

Das, Gautham, Vance, Philip J., Kerr, Dermot , Coleman, Sonya A., McGinnity, Thomas M. and Liu, Jian K. (2019) Computational modelling of salamander retinal ganglion cells using machine learning approaches. Neurocomputing, 325 . pp. 101-112. ISSN 0925-2312

Full content URL: https://doi.org/10.1016/j.neucom.2018.10.004

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Computational modelling of salamander retinal ganglion cells using machine learning approaches
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Abstract

Artificial vision using computational models that can mimic biological vision is an area of ongoing research. One of the main themes within this research is the study of the retina and in particular, retinal ganglion cells which are responsible for encoding the visual stimuli. A common approach to modelling the internal processes of retinal ganglion cells is the use of a linear – non-linear cascade model, which models the cell’s response using a linear filter followed by a static non-linearity. However, the resulting model is generally restrictive as it is often a poor estimator of the neuron’s response. In this paper we present an alternative to the linear – non-linear model by modelling retinal ganglion cells using a number of machine learning techniques which have a proven track record for learning complex non-linearities in many different domains. A comparison of the model predicted spike rate shows that the machine learning models perform better than the standard linear – non-linear approach in the case of temporal white noise stimuli.

Keywords:artificial vision, biological vision, machine learning, retinal ganglion cells
Subjects:G Mathematical and Computer Sciences > G750 Cognitive Modelling
Divisions:College of Science > Lincoln Institute for Agri-Food Technology
ID Code:40818
Deposited On:30 Sep 2020 11:21

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