1980

Neocognitron: A Self-Organizing Neural Network Model for a Mechanism of Pattern Recognition Unaffected by Shift in Position

Kunihiko Fukushima

citations

Cite Score

85

AI summary

The paper introduces the neocognitron, a self-organizing neural network model for visual pattern recognition unaffected by shifts in position, using unsupervised learning and hierarchical modular structure, demonstrating position and distortion-invariant recognition through computer simulation.

Main Contributions

  • Introduces the neocognitron, a novel neural network model for pattern recognition.
  • Achieves position-invariant pattern recognition through self-organization and hierarchical structure.
  • Employs unsupervised learning, eliminating the need for a teacher during training.
  • Simulates the network on a digital computer, demonstrating its ability to recognize patterns despite shifts in position, changes in shape, and changes in size.
  • The architecture consists of S-cells and C-cells, organized in a cascaded, modular fashion, inspired by Hubel and Wiesel's hierarchy model of the visual nervous system.

Abstract

Abstract. A neural network model for a mechanism of visual pattern recognition is proposed in this paper. The network is self-organized by "learning without a teacher", and acquires an ability to recognize stimulus patterns based on the geometrical similarity (Gestalt) of their shapes without affected by their positions. This network is given a nickname "neocognitron". After completion of self-organization, the network has a structure similar to the hierarchy model of the visual nervous system proposed by Hubel and Wiesel. The network consists of an input layer (photoreceptor array) followed by a cascade connection of a number of modular structures, each of which is composed of two layers of cells connected in a cascade. The first layer of each module consists of "S-cells", which show characteristics similar to simple cells or lower order hypercomplex cells, and the second layer consists of "C-cells" similar to complex cells or higher order hypercomplex cells. The afferent synapses to each S-cell have plasticity and are modifiable. The network has an ability of unsupervised learning: We do not need any “teacher" during the process of self-organization, and it is only needed to present a set of stimulus patterns repeatedly to the input layer of the network. The network has been simulated on a digital computer. After repetitive presentation of a set of stimulus patterns, each stimulus pattern has become to elicit an output only from one of the C-cells of the last layer, and conversely, this C-cell has become selectively responsive only to that stimulus pattern. That is, none of the C-cells of the last layer responds to more than one stimulus pattern. The response of the C-cells of the last layer is not affected by the pattern's position at all. Neither is it affected by a small change in shape nor in size of the stimulus pattern.

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References [13]

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Kunihiko Fukushima - 1975

4 papers in library cite

D. H. Hubel, T. N. Wiesel - 1962

8 papers in library cite

F. Rosenblatt - 1962

7 papers in library cite

D. H. Hubel, T. Wiesel - 1977

2 papers in library cite

D. H. Hubel, T. N. Wiesel - 1965

2 papers in library cite

M. Kabrisky - 1966

1 paper in library cites

R. Meyer, R. Sperry - 1974

1 paper in library cites

H. Giebel - 1971

1 paper in library cites

Kunihiko Fukushima - 1978

1 paper in library cites

T. Sato, T. Kawamura, E. Iwai - 1978

1 paper in library cites

Kunihiko Fukushima - 1979

1 paper in library cites

Kunihiko Fukushima - 1979

1 paper in library cites

C. Gross, C. R. Miranda, D. Bender - 1972

1 paper in library cites

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