Laaksonen, 1997 - Google Patents
Subspace classifiers in recognition of handwritten digitsLaaksonen, 1997
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- 16199380039922758200
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- Laaksonen J
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This thesis consists of two parts. The first part reviews the general structure of a pattern recognition system and, in particular, various statistical and neural classification algorithms. The presentation then focuses on subspace classification methods that form a family of …
- 230000001537 neural 0 abstract description 74
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