Face classification by a random forest
2007pp. 1–4
Citations Over TimeTop 19% of 2007 papers
Abstract
This paper presents a random forest-based face image classification method. The random forest is an ensemble learning method that grows many classification trees. Each tree gives a classification. The forest selects the classification that has the most votes. Three experiments are performed. The random forest-based method together with several existing approaches are trained and evaluated. The experimental results are presented and discussed.
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