Jiang, 1990 - Google Patents
The architecture and design of a neural network classifierJiang, 1990
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- 10305847785356527597
- Author
- Jiang J
- Publication year
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The objective of this thesis is to present the architecture and design of a neural network- based pattern classifier. The classifier detects textual characters which have been translated, rotated, and corrupted by noise. This form of pattern classifier differs significantly …
- 230000001537 neural 0 title abstract description 188
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