Bayesian estimation of orientation preference maps
Gerwinn, Sebastian, White, Leonard, Kaschube, Matthias, Bethge, Matthias, Macke, Jakob H.
–Neural Information Processing Systems
Imaging techniques such as optical imaging of intrinsic signals, 2-photon calcium imaging and voltage sensitive dye imaging can be used to measure the functional organization of visual cortex across different spatial scales. Here, we present Bayesian methods based on Gaussian processes for extracting topographic maps from functional imaging data. In particular, we focus on the estimation of orientation preference maps (OPMs) from intrinsic signal imaging data. We model the underlying map as a bivariate Gaussian process, with a prior covariance function that reflects known properties of OPMs, and a noise covariance adjusted to the data. The posterior mean can be interpreted as an optimally smoothed estimate of the map, and can be used for model based interpolations of the map from sparse measurements.
Neural Information Processing Systems
Feb-15-2020, 02:42:42 GMT