Multi-representational learning for Offline Signature Verification using Multi-Loss Snapshot Ensemble of CNNs

作者:

Highlights:

• Multi-Loss Snapshot Ensemble (MLSE) of CNNs offers feature ensemble learning for OSV.

• MLSE proposes simultaneous use of multi-loss function within a sequential training.

• MLSE combines advantage of diversity and regularization to tackle challenges of OSV.

• USMG-SVM combines decisions by selecting most generalizable SVM for each user.

• MLSE + USMG-SVM achieved significant improvements over state-of-the-arts in OSV.

摘要

•Multi-Loss Snapshot Ensemble (MLSE) of CNNs offers feature ensemble learning for OSV.•MLSE proposes simultaneous use of multi-loss function within a sequential training.•MLSE combines advantage of diversity and regularization to tackle challenges of OSV.•USMG-SVM combines decisions by selecting most generalizable SVM for each user.•MLSE + USMG-SVM achieved significant improvements over state-of-the-arts in OSV.

论文关键词:Offline Signature Verification,Convolutional Neural Network,Multi-loss function,Snapshot Ensemble

论文评审过程:Received 8 October 2018, Revised 6 March 2019, Accepted 6 March 2019, Available online 23 March 2019, Version of Record 24 May 2019.

论文官网地址:https://doi.org/10.1016/j.eswa.2019.03.040