Learning and Recognition of Visual Patterns by Human Subjects and Artificial Intelligence Systems
Volume 9, Issue 4 (1998), pp. 415–424
Pub. online: 1 January 1998
Type: Research Article
Vilnius University, Dept. Biochemistry and Biophysics, M.K. Čiurlionio 21, 2009 Vilnius, Lithuania. E-mail: alvydas.soliunas@gf.vu.lt
Received
1 September 1998
1 September 1998
Published
1 January 1998
1 January 1998
Abstract
Comparative study of the recognition of nonsemantic geometrical figures by the human subjects and ART neural network was carried out. The results of computer simulation experiments with ART neural network showed well correspondence with the psychophysical data on the recognition of different complexity visual patterns: in both cases the patterns of medium complexity were recognized with the highest accuracy. On the contrary, the recognition of the patterns by their informative fragments demonstrated different recognition strategies employed by natural and artificial neural systems. For biological systems, it is necessary the presence of not only distinctive features in visual patterns but the redundant features as well for successive recognition. ART neural network ignores redundant features and recognizes visual patterns with equal accuracy whether the whole pattern or only the informative fragment of any completeness is present.