H. Shouno et K. Kurata, Formation of a direction map by projection learning using Kohonen's self-organization map, BIOL CYBERN, 85(4), 2001, pp. 241-246
In this paper, we propose a modification of Kohonen's self-organization map
(SOM) algorithm. When the input signal space is not convex, some reference
vectors of SOM can protrude from it. The input signal space must be convex
to keep all the reference vectors fixed on it for any updates. Thus, we in
troduce a projection learning method that fixes the reference vectors onto
the input signal space. This version of SOM can be applied to a non-convex
input signal space. We applied SOM with projection learning to a direction
map observed in the primary visual cortex of area 17 of ferrets, and area 1
8 of cats. Neurons in those areas responded selectively to the orientation
of edges or line segments, and their directions of motion. Some iso-orienta
tion domains were subdivided into selective regions for the opposite direct
ion of motion. The abstract input signal space of the direction map describ
ed in the manner proposed by Obermayer and Blasdel [(1993) J Neurosci 13: 4
114-4129] is not convex. We successfully used SOM with projection learning
to reproduce a direction-orientation joint map.