Sparse Coding of Natural Images Using an Overcomplete Set of Limited Capacity Units.
Eizaburo Doi & Michael S. Lewicki
Advances in Neural Information Processing Systems, 2005, vol.17, pp.377-384
Abstract
It has been suggested that
the primary goal of the sensory system is to represent input
in such a way as to reduce the high degree of redundancy.
Given a noisy neural representation, however,
solely reducing redundancy is not desirable,
since redundancy is the only clue to
reduce the effects of noise.
Here we propose a model that
best balances redundancy reduction and redundant representation.
Like previous models,
our model accounts for the localized and oriented structure of simple cells,
but it also predicts
a different organization for the population.
With noisy,
limited-capacity units,
the optimal representation becomes an overcomplete,
multi-scale representation,
which, compared to previous models, is in closer agreement with physiological data.
These results offer a new perspective on the expansion of the number of neurons from retina to V1
and provide a theoretical model of incorporating useful redundancy into efficient neural representations.
[preprint]
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