Dynamic selection of generative–discriminative ensembles for off-line signature verification

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摘要

In practice, each writer provides only a limited number of signature samples to design a signature verification (SV) system. Hybrid generative–discriminative ensembles of classifiers (EoCs) are proposed in this paper to design an off-line SV system from few samples, where the classifier selection process is performed dynamically. To design the generative stage, multiple discrete left-to-right Hidden Markov Models (HMMs) are trained using a different number of states and codebook sizes, allowing the system to learn signatures at different levels of perception. To design the discriminative stage, HMM likelihoods are measured for each training signature, and assembled into feature vectors that are used to train a diversified pool of two-class classifiers through a specialized Random Subspace Method. During verification, a new dynamic selection strategy based on the K-nearest-oracles (KNORA) algorithm and on Output Profiles selects the most accurate EoCs to classify a given input signature. This SV system is suitable for incremental learning of new signature samples. Experiments performed with real-world signature data (composed of genuine samples, and random, simple and skilled forgeries) indicate that the proposed dynamic selection strategy can significantly reduce the overall error rates, with respect to other EoCs formed using well-known dynamic and static selection strategies. Moreover, the performance of the SV system proposed in this paper is significantly greater than or comparable to that of related systems found in the literature.

论文关键词:Off-line signature verification,Ensemble of classifiers,Dynamic selection,Hybrid generative–discriminative systems,Hidden Markov Models,Incremental learning

论文评审过程:Received 22 December 2010, Revised 26 September 2011, Accepted 21 October 2011, Available online 29 October 2011.

论文官网地址:https://doi.org/10.1016/j.patcog.2011.10.011