David Field
Cornell University
Selectivity, hyper-selectivity and gain control: A comparison of non-linear models in the early visual system
Monday 10th of July 2017 at 06:00pm
1011 Evans
I will discuss some implications of an approach that attempts to describe
the various non-linearities of neurons in the visual pathway using a
geometric framework. This approach will be used to make a distinction
between selectivity and hyper-selectivity. Selectivity will be defined in
terms of the optimal stimulus of a neuron, while hyper-selectivity will be
defined in terms of the falloff in response as one moves away from the
optimal stimulus. With this distinction, I show that it is possible for a
neuron to be very narrowly tuned (hyper-selective) to a broadband
stimulus. We show that hyper-selectivity allows V1 neurons to break the
Gabor-Heisenberg localization limit. The general approach will be used to
contrast different theories of non-linear processing including sparse
coding, gain control, and linear non-linear (LNL) models. Finally, I will
show that the approach provides insights into the non-linearities found
with overcomplete sparse codes  and argues that sparse coding provides
the most parsimonious account of the common non-linearities found in the
early visual system.(video)
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