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Modelling Spoken Signatures With Gaussian Mixture Model Adaptation
Type of publication: Inproceedings
Citation: henn07:icassp
Booktitle: IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP 07)
Year: 2007
Abstract: We report on our developments towards building a novel user authentication system using combined acquisition of online handwritten signature and speech modalities. In our approach, signatures are recorded by asking the user to say what she/he is writing, leading to the so-called spoken signatures. We have built a verification system composed of two Gaussian Mixture Models (GMMs) sub-systems that model independently the pen and voice signal. We report on results obtained with two algorithms used for training the GMMs, respectively Expectation Maximization and Maximum A Posteriori Adaptation. Different algorithms are also compared for fusing the scores of each modality. The evaluations are conducted on spoken signatures taken from the MyIDea multimodal database, accordingly to the protocols provided with the database. Results are in favor of using MAP adaptation with a simple weighted sum fusion. Results show also clearly the impact of time variability and of skilled versus unskilled forgeries attacks.
Keywords: Biometrics, GMM, Signature Verification, Speaker Verification
Authors Hennebert, Jean
Humm, Andreas
Ingold, Rolf
Added by: []
Total mark: 0
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