ARTICLE Fleuret_PRL_2008/IDIAP Multi-layer Boosting for Pattern Recognition Fleuret, Francois https://publications.idiap.ch/index.php/publications/showcite/Fleuret_Idiap-RR-76-2008 Related documents Pattern Recognition Letter 30 237-241 2009 We extend the standard boosting procedure to train a two-layer classifier dedicated to handwritten char- acter recognition. The scheme we propose relies on a hidden layer which extracts feature vectors on a fixed number of points of interest, and an output layer which combines those feature vectors and the point of interest locations into a final classification decision. Our main contribution is to show that the classical AdaBoost procedure can be extended to train such a multi-layered structure by propagating the error through the output layer. Such an extension allows for the selection of optimal weak learners by minimizing a weighted error, in both the output layer and the hidden layer. We provide experimental results on the MNIST database and compare to a classical unsu- pervised EM-based feature extraction. REPORT Fleuret_Idiap-RR-76-2008/IDIAP Multi-layer Boosting for Pattern Recognition Fleuret, Francois EXTERNAL https://publications.idiap.ch/attachments/reports/2008/Fleuret_Idiap-RR-76-2008.pdf PUBLIC Idiap-RR-76-2008 2008 Idiap December 2008 We extend the standard boosting procedure to train a two-layer classifier dedicated to handwritten character recognition. The scheme we propose relies on a hidden layer which extracts feature vectors on a fixed number of points of interest, and an output layer which combines those feature vectors and the point of interest locations into a final classification decision. Our main contribution is to show that the classical AdaBoost procedure can be extended to train such a multi-layered structure by propagating the error through the output layer. Such an extension allows for the selection of optimal weak learners by minimizing a weighted error, in both the output layer and the hidden layer. We provide experimental results on the MNIST database and compare to a classical unsupervised EM-based feature extraction.