Özet:
In this thesis, we investigate model selection and channel variability issues on telephone-based text-dependent speaker verification applications. Due to the lack of an appropriate database for the task, we collected two multi-channel speaker recognition databases which are referred to as text-dependent variable text (TDVT-D) and textdependent single utterance (TDSU-D). TDVT-D consists of digit strings and short utterances in Turkish and TDSU-D contains a single Turkish phrase. In the TVDT-D, Gaussian mixture model (GMM) and hidden Markov model (HMM) based methods are compared using several authentication utterances, enrollment scenarios and enrollment-authentication channel conditions. In the experiments, we employ a rankbased decision making procedure. In the second set of experiments, we investigate three channel compensation techniques together with cepstral mean subtraction (CMS): i) LTAS filtering ii) MLLR transformation iii) handset-dependent rank-based decision making (Hrank). In all three methods, a prior knowledge of the employed channel type is required. We recognize the channels with channel GMMs trained for each condition. In this section, we also analyze the influence of channel detection errors on the verification performance. In the TDSU-D, phonetic HMM, sentence HMM and GMM based methods are compared for the single utterance task. In order to compensate for channel mismatch conditions, we implement test normalization (T-norm), zero normalization (Z-norm) and combined (i.e., TZ-norm and ZT-norm) score normalization techniques. We also propose a novel combination procedure referred to as C-norm. Additionally, we benefit from the prior knowledge of handset-channel type in order to improve the verification performance. A cohort-based channel detection method is introduced in addition to the classical GMMbased method. After the score normalization section, feature domain spectral mean division (SMD) method is presented as an alternative to the well-known CMS. In the last set of experiments, prosodic (energy, pitch, duration) and spectral features are combined together in the sentence HMM framework.