Self-organizing neural network for pattern classification

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395 22, 395 23, G06F 1518

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056825030

ABSTRACT:
A neural network includes a plurality of input nodes for receiving the respective elements of the input vector. A copy of all of the elements of the input vector is sent to the next level of nodes in the neural network denoted as intermediate nodes. The intermediate nodes each encode a separate template pattern. They compare the actual input pattern with the template and generate a signal indicative of the difference between the input pattern and the template pattern. Each of the templates encoded in the intermediate nodes has a class associated with it. The difference calculated by the intermediate nodes is passed to an output node for each of the intermediate nodes at a given class. The output node then selects the minimum difference amongst the values sent from the intermediate nodes. This lowest difference for the class represented by the output node is then forwarded to a selector. The selector receives such values from each of the output nodes of all of the classes and then selects that to output value which is a minimum difference. The selector in turn, generates a signal indicative of the class of the intermediate node that sent the smallest difference value.

REFERENCES:
patent: 3950733 (1976-04-01), Cooper et al.
patent: 4044243 (1977-08-01), Cooper et al.
patent: 4326259 (1982-04-01), Cooper et al.
patent: 4451929 (1984-05-01), Yoshida
patent: 4760604 (1988-07-01), Cooper et al.
patent: 4774677 (1988-09-01), Buckley
patent: 4805225 (1989-02-01), Clark
patent: 4914708 (1990-04-01), Carpenter et al.
patent: 4958375 (1990-09-01), Reilly et al.
patent: 4975961 (1990-12-01), Sakoe
patent: 5033006 (1991-07-01), Ishizula et al.
patent: 5045713 (1991-09-01), Shima
patent: 5048100 (1991-09-01), Kuperstein
patent: 5052043 (1991-09-01), Goborski
patent: 5056037 (1991-10-01), Eberhardt
patent: 5060278 (1991-10-01), Fukumizu
patent: 5129039 (1992-07-01), Hiraiwa
patent: 5157738 (1992-10-01), Carpenter et al.
patent: 5165010 (1992-11-01), Masuda et al.
patent: 5195169 (1993-03-01), Kamiya et al.
patent: 5214743 (1993-05-01), Asai et al.
patent: 5293454 (1994-03-01), Kamiya
patent: 5297237 (1994-03-01), Masuoka et al.
patent: 5299284 (1994-03-01), Roy
patent: 5553196 (1996-09-01), Takatori et al.
Dan Hammerstrom, "A VLSI Architecture for High-Performance, Low-Cost, On-Chip Learning", IEEE IJCNN, Jun. 1990.
T. Kohonen, "Statistical Pattern Recognition Revisited", Advanced Neural Computers, R. Eckmiller, ed (1990), 137-143.
T. Kohonen, "Improved Versions of Learning Vector Quantization", Proc. of Int'l. Joint Conf. of Neural Networks, Jun. 1990, (I-545)-(I-550).
B.G. Batchelor, "Classification and Data Analysis in Vector Spaces," Pattern Recognition; Ideas in Practice, ed (1977), pp. 67-116.
Reilly et al., Learning System Architectures Composed of Multiple Learning Modules, Brown University, Providence, RI, (1987).
Makhoul, et al., Vector Quantization in Speech Coding, Proceedings of the IEEE, vol. 73, No. 11, pp. 1551-1588, Nov. 1985.
J. Marshall, "Self-Organizing Neural Networks for Perception of Visual Motion", Neural Networks, vol. 3, No. 1, 1990, pp. 45-74.
Fritz Seytter, "A Self-Organizing Neural Net for Depth Movement Analysis", Parallel Processing in Neural Systems and Computers, Elsevier Sci. Pub. 1990, pp. 369-372.
Sebestyen, "Decision-Making Processes in Pattern Recognition," MacMillan, 1962, pp. 17-24, 37-53, 91-96, 108-112, 120-131 and 142-151.
R. Duda et al., Pattern Classification and Scene Analysis, 1973, pp. 1-7.
C. Suen et al., "Automated Recognition of Handprinted Characters-The State of the Art", Proc. of IEEE, Apr. 1980, pp. 469-487.
R. Lippman, "An Introduction to Computing with Neural Nets", IEEE ASSP Magazine, Apr. 1987, pp. 4-22.

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