Hidden Markov Models for Spoken Signature Verification

In this paper we report on the developments of an efficient user authentication system using combined acquisition of online signature and speech modalities. In our project, these two modalities are simultaneously recorded by asking the user to utter what she/he is writing. The main benefit of this multimodal approach is a better accuracy at no extra costs in terms of access time or inconvenience. More specifically, we report in this paper on significant improvements of our initial system that was based on Gaussian Mixture Models (GMMs) applied independently to the pen and voice signal. We show that the GMMs can be advantageously replaced by Hidden Markov Models (HMMs) provided that the number of state used for the topology is optimized and provided that the model parameters are trained with a Maximum a Posteriori (MAP) adaptation procedure instead of the classically used Expectation Maximization (EM). The evaluations are conducted on spoken signatures taken from the MylDea multimodal database. Consistently with our previous evaluation of the GMM system, we observe for the HMM system that the use of both speech and handwriting modalities outperforms significantly these modalities used alone. We also report on the evaluations of different score fusion strategies.

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