16,414 research outputs found
Collapsed speech segment detection and suppression for WaveNet vocoder
In this paper, we propose a technique to alleviate the quality degradation
caused by collapsed speech segments sometimes generated by the WaveNet vocoder.
The effectiveness of the WaveNet vocoder for generating natural speech from
acoustic features has been proved in recent works. However, it sometimes
generates very noisy speech with collapsed speech segments when only a limited
amount of training data is available or significant acoustic mismatches exist
between the training and testing data. Such a limitation on the corpus and
limited ability of the model can easily occur in some speech generation
applications, such as voice conversion and speech enhancement. To address this
problem, we propose a technique to automatically detect collapsed speech
segments. Moreover, to refine the detected segments, we also propose a waveform
generation technique for WaveNet using a linear predictive coding constraint.
Verification and subjective tests are conducted to investigate the
effectiveness of the proposed techniques. The verification results indicate
that the detection technique can detect most collapsed segments. The subjective
evaluations of voice conversion demonstrate that the generation technique
significantly improves the speech quality while maintaining the same speaker
similarity.Comment: 5 pages, 6 figures. Proc. Interspeech, 201
Bayesian distance metric learning on i-vector for speaker verification
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer Science, 2013.Cataloged from PDF version of thesis.Includes bibliographical references (pages 63-66).This thesis explores the use of Bayesian distance metric learning (Bayes_dml) for the task of speaker verification using the i-vector feature representation. We propose a framework that explores the distance constraints between i-vector pairs from the same speaker and different speakers. With an approximation of the distance metric as a weighted covariance matrix of the top eigenvectors from the data covariance matrix, variational inference is used to estimate a posterior distribution of the distance metric. Given speaker labels, we select different-speaker data pairs with the highest cosine scores to form a different-speaker constraint set. This set captures the most discriminative between-speaker variability that exists in the training data. This system is evaluated on the female part of the 2008 NIST SRE dataset. Cosine similarity scoring, as the state-of-the-art approach, is compared to Bayes-dml. Experimental results show the comparable performance between Bayes_dml and cosine similarity scoring. Furthermore, Bayes-dml is insensitive to score normalization, as compared to cosine similarity scoring. Without the requirement of the number of labeled examples, Bayes_dml performs better in the context of limited training databy Xiao Fang.S.M
Factorization of Discriminatively Trained i-vector Extractor for Speaker Recognition
In this work, we continue in our research on i-vector extractor for speaker
verification (SV) and we optimize its architecture for fast and effective
discriminative training. We were motivated by computational and memory
requirements caused by the large number of parameters of the original
generative i-vector model. Our aim is to preserve the power of the original
generative model, and at the same time focus the model towards extraction of
speaker-related information. We show that it is possible to represent a
standard generative i-vector extractor by a model with significantly less
parameters and obtain similar performance on SV tasks. We can further refine
this compact model by discriminative training and obtain i-vectors that lead to
better performance on various SV benchmarks representing different acoustic
domains.Comment: Submitted to Interspeech 2019, Graz, Austria. arXiv admin note:
substantial text overlap with arXiv:1810.1318
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