PLDA based speaker verification with weighted LDA techniques
نویسندگان
چکیده
This paper investigates the use of the dimensionality-reduction techniques weighted linear discriminant analysis (WLDA), and weighted median fisher discriminant analysis (WMFD), before probabilistic linear discriminant analysis (PLDA) modeling for the purpose of improving speaker verification performance in the presence of high inter-session variability. Recently it was shown that WLDA techniques can provide improvement over traditional linear discriminant analysis (LDA) for channel compensation in i-vector based speaker verification systems. We show in this paper that the speaker discriminative information that is available in the distance between pair of speakers clustered in the development i-vector space can also be exploited in heavy-tailed PLDA modeling by using the weighted discriminant approaches prior to PLDA modeling. Based upon the results presented within this paper using the NIST 2008 Speaker Recognition Evaluation dataset, we believe that WLDA and WMFD projections before PLDA modeling can provide an improved approach when compared to uncompensated PLDA modeling for i-vector based speaker verification systems.
منابع مشابه
Short Utterance PLDA Speaker Verification using SN-WLDA and Variance Modelling Techniques
This paper proposes a combination of source-normalized weighted linear discriminant analysis (SN-WLDA) and short utterance variance (SUV) PLDA modelling to improve the short utterance PLDA speaker verification. As short-length utterance i-vectors vary with the speaker, session variations and phonetic content of the utterance (utterance variation), a combined approach of SN-WLDA projection and S...
متن کاملVariance-spectra based normalization for i-vector standard and probabilistic linear discriminant analysis
I-vector extraction and Probabilistic Linear Discriminant Analysis (PLDA) has become the state-of-the-art configuration for speaker verification. Recently, Gaussian-PLDA has been improved by a preliminary length normalization of i-vectors. This normalization, known to increase the Gaussianity of the i-vector distribution, also improves performance of systems based on standard Linear Discriminan...
متن کاملExploring Hilbert envelope based acoustic features in i-vector speaker verification using HT-PLDA
In this study we evaluate the effectiveness of our recently introduced Mean Hilbert Envelope Coefficients (MHEC) in i-vector speaker verification using heavy-tailed probabilistic linear discriminant analysis (HT-PLDA) as the compensation/backend framework. The i-vectors are estimated for MHECs, and also the conventional and widely used MFCCs for comparison. The linear discriminant analysis (LDA...
متن کاملSub-vector Extraction and Cascade Post-Processing for Speaker Verification Using MLLR Super-vectors
In this paper, we propose a speaker-verification system based on maximum likelihood linear regression (MLLR) super-vectors, for which speakers are characterized by m-vectors. These vectors are obtained by a uniform segmentation of the speaker MLLR super-vector using an overlapped sliding window. We consider three approaches for MLLR transformation, based on the conventional 1-best automatic tra...
متن کاملDiscriminative subspace modeling of SNR and duration variabilities for robust speaker verification
Although i-vectors together with probabilistic LDA (PLDA) have achieved a great success in speaker verification, how to suppress the undesirable effects caused by the variability in utterance length and background noise level is still a challenge. This paper aims to improve the robustness of i-vector based speaker verification systems by compensating for the utterance-length variability and noi...
متن کامل