Kenji Hosoda, Masataka Watanabe, Heiko Wersing, Edgar Koerner, Hiroshi Tsujiino, Hiroshi Tamura, and Ichiro Fujita (2009)
A model for learning topographically organized parts-based representations of objects in visual cortex: topographic non-negative matrix factorization
Neural Computation 21(9):2605-2633.
Object representation in the inferior temporal cortex (IT), an area of visual cortex
critical for object recognition in the primate, exhibits two prominent properties;
(1) objects are represented by the combined activity of columnar clusters of
neurons, each cluster represents component features or parts of objects, and (2)
closely related features are continuously represented along the tangential direction
of individual columnar clusters. Here we propose a learning model that reflects
these properties of parts-based representation and topographic organization in a
unified framework. This model is based on a non-negative matrix factorization
(NMF) basis-decomposition method. NMF alone provides a parts-based
representation where non-negative inputs are approximated by additive
combinations of non-negative basis functions. Our proposed model of topographic
NMF (TNMF) incorporates neighborhood connections between NMF basis
functions arranged on a topographic map and attains the topographic property
without losing the parts-based property of the NMF. The TNMF represents an
input by multiple activity peaks to describe diverse information whereas
conventional topographic models, such as self-organizing map (SOM), represent
an input by a single activity peak in a topographic map. We demonstrate the
parts-based and topographic properties of the TNMF by constructing a
hierarchical model for object recognition where the TNMF is at the top tier for
learning high-level object features. The TNMF showed better generalization
performance over NMF for a data set of continuous view change of an image, with
more robustly preserving the continuity of the view change in its object
representation. Comparison of the outputs of our model with actual neural
responses recorded in the IT indicates that the TNMF reconstructs the neuronal
responses better than the SOM, giving plausibility to the parts-based learning of
the model.
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Created by heiko - 2009-02-10 14:20
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Created by heiko - 2009-02-10 14:20
Last modified by - 2011-01-20 16:56



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