Robert Sabourin

Affiliations: 
Ecole de Technologie Superieure (Canada) 
Area:
Computer Science
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"Robert Sabourin"
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Publications

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Zyblewski P, Sabourin R, Woźniak M. (2021) Preprocessed dynamic classifier ensemble selection for highly imbalanced drifted data streams Information Fusion. 66: 138-154
Hafemann LG, Sabourin R, Oliveira LS. (2020) Meta-Learning for Fast Classifier Adaptation to New Users of Signature Verification Systems Ieee Transactions On Information Forensics and Security. 15: 1735-1745
Souza VL, Oliveira AL, Cruz RM, et al. (2020) A white-box analysis on the writer-independent dichotomy transformation applied to offline handwritten signature verification Expert Systems With Applications. 154: 113397
Cruz RMO, Souza MA, Sabourin R, et al. (2019) Dynamic Ensemble Selection and Data Preprocessing for Multi-Class Imbalance Learning International Journal of Pattern Recognition and Artificial Intelligence. 33: 1940009
Hafemann LG, Sabourin R, Oliveira LS. (2019) Characterizing and Evaluating Adversarial Examples for Offline Handwritten Signature Verification Ieee Transactions On Information Forensics and Security. 14: 2153-2166
Cao H, Bernard S, Sabourin R, et al. (2019) Random forest dissimilarity based multi-view learning for Radiomics application Pattern Recognition. 88: 185-197
Souza MA, Cavalcanti GD, Cruz RM, et al. (2019) Online local pool generation for dynamic classifier selection Pattern Recognition. 85: 132-148
Cruz RM, Oliveira DV, Cavalcanti GD, et al. (2019) FIRE-DES++: Enhanced online pruning of base classifiers for dynamic ensemble selection Pattern Recognition. 85: 149-160
Hochuli A, Oliveira L, Britto Jr A, et al. (2018) Handwritten digit segmentation: Is it still necessary? Pattern Recognition. 78: 1-11
Brun AL, Britto AS, Oliveira LS, et al. (2018) A framework for dynamic classifier selection oriented by the classification problem difficulty Pattern Recognition. 76: 175-190
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