Title of article :
Model selection and score normalization for text-dependent single utterance speaker verification
Author/Authors :
buyuk, osman bogazici university - department of electrical and electronics engineering, TURKEY , arslan, mustafa levent istanbul technical university, ayazaga campus - sestek inc. - research and development department, TURKEY , arslan, mustafa levent bogazici university - department of electrical and electronics engineering, TURKEY
From page :
1277
To page :
1295
Abstract :
In this paper, we investigate model selection and channel variability issues on a text-dependent single utterance (TDSU) speaker verification application. Due to the lack of an appropriate database for the task, a multichannel speaker recognition database, which consists of multiple recordings of a single Turkish utterance, is collected. The first set of experiments is devoted to model selection. Phonetic hidden Markov model (HMM)-based, sentence HMM-based, and Gaussian mixture model (GMM)-based methods are compared to find the most appropriate modeling approach for the target application. Based on the experimental results, the HMM-based methods outperform the GMM. The sentence HMM yields the best performance among the 3 approaches. In the second set of experiments, we implement various score normalization techniques in order to compensate for channel mismatch conditions. Test normalization, zero normalization, and their combinations are investigated for the TDSU task. We propose a novel combination procedure named combined normalization (C-norm). We also benefit from prior knowledge of the handset-channel type in order to improve the verification performance. A cohort-based channel detection procedure is presented to identify enrollment/authentication channels in addition to the GMM-based method. In score normalization, handsetdependent C-norm results in the best performance, with a 0.72% equal error rate (EER) in the ideal channel known case and a 0.74% EER when the GMM and cohort-based systems are combined together for channel detection.
Keywords :
Speaker verification , text dependent , single utterance , sentence HMM , score normalization
Journal title :
Turkish Journal of Electrical Engineering and Computer Sciences
Journal title :
Turkish Journal of Electrical Engineering and Computer Sciences
Record number :
2532363
Link To Document :
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