Spike-triggered
characterization of excitatory and suppressive stimulus dimensions in
monkey V1. Nicole C Rust, Odelia Schwartz, J Anthony Movshon, and Eero
P Simoncelli.
Presented
at: Annual Meeting, Computational Neuroscience, Alicante Spain, 5-9
July 2003.
Neurocomputing Elsevier publishers, 2004.
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Neurons in primary visual cortex are commonly characterized using linear
models, or simple extensions of linear models. Specifically, V1 simple
cell responses are often characterized using a rectified linear receptive
field, and complex cell responses are often described as the sum of
squared responses of two linear subunits. We examined this class of
model directly by applying spike-triggered covariance analysis to responses
of monkey V1 neurons under binary white noise stimulation. The analysis
extracts a low-dimensional subspace of the full stimulus space that
is primarily responsible for generation of the neural response, including
both excitatory and suppressive components. We found no fewer than two
excitatory dimensions in simple cells, and as many as seven dimensions
in complex cells. For all cells, we also found suppressive dimensions
that were at least equal in number to the excitatory dimensions. These
results suggest that extensions to standard models are required to fully
describe the response properties of cells in V1.
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