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Artificial intelligence / Ensemble learning / Face recognition / Feature detection / Machine learning / ViolaJones object detection framework / Boosting / AdaBoost / Statistical classification / Pattern recognition / Support vector machine / Cascading classifiers
Date: 2006-01-16 09:17:12
Artificial intelligence
Ensemble learning
Face recognition
Feature detection
Machine learning
ViolaJones object detection framework
Boosting
AdaBoost
Statistical classification
Pattern recognition
Support vector machine
Cascading classifiers

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