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Dive into the research topics where Thomas Merritt is active.

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Featured researches published by Thomas Merritt.


international conference on acoustics, speech, and signal processing | 2016

Deep neural network-guided unit selection synthesis

Thomas Merritt; Robert A. J. Clark; Zhizheng Wu; Junichi Yamagishi; Simon King

Vocoding of speech is a standard part of statistical parametric speech synthesis systems. It imposes an upper bound of the naturalness that can possibly be achieved. Hybrid systems using parametric models to guide the selection of natural speech units can combine the benefits of robust statistical models with the high level of naturalness of waveform concatenation. Existing hybrid systems use Hidden Markov Models (HMMs) as the statistical model. This paper demonstrates that the superiority of Deep Neural Network (DNN) acoustic models over HMMs in conventional statistical parametric speech synthesis also carries over to hybrid synthesis. We compare various DNN and HMM hybrid configurations, guiding the selection of waveform units in either the vocoder parameter domain, or in the domain of embeddings (bottleneck features).


international conference on acoustics, speech, and signal processing | 2016

From HMMS to DNNS: Where do the improvements come from?

Oliver Watts; Gustav Eje Henter; Thomas Merritt; Zhizheng Wu; Simon King


conference of the international speech communication association | 2014

Measuring the perceptual effects of modelling assumptions in speech synthesis using stimuli constructed from repeated natural speech

Gustav Eje Henter; Thomas Merritt; Matt Shannon; Catherine Mayo; Simon King


conference of the international speech communication association | 2014

Investigating source and filter contributions, and their interaction, to statistical parametric speech synthesis.

Thomas Merritt; Tuomo Raitio; Simon King


international conference on acoustics, speech, and signal processing | 2015

Attributing modelling errors in HMM synthesis by stepping gradually from natural to modelled speech

Thomas Merritt; Javier Latorre; Simon King


SSW | 2013

Investigating the shortcomings of HMM synthesis

Thomas Merritt; Simon King


conference of the international speech communication association | 2015

Deep neural network context embeddings for model selection in rich-context HMM synthesis

Thomas Merritt; Junichi Yamagishi; Zhizheng Wu; Oliver Watts; Simon King


conference of the international speech communication association | 2014

A Flexible Front-End for HTS

Matthew P. Aylett; Rasmus Dall; Arnab Ghoshal; Gustav Eje Henter; Thomas Merritt


conference of the international speech communication association | 2017

Phrase Break Prediction for Long-Form Reading TTS: Exploiting Text Structure Information.

Viacheslav Klimkov; Adam Nadolski; Alexis Moinet; Bartosz Putrycz; Roberto Barra-Chicote; Thomas Merritt; Thomas Drugman


Archive | 2016

Listening test materials for "Deep neural network-guided unit selection synthesis"

Simon King; Robert A. J. Clark; Zhizheng Wu; Junichi Yamagishi; Thomas Merritt

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Simon King

University of Edinburgh

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Zhizheng Wu

University of Edinburgh

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Oliver Watts

University of Edinburgh

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Junichi Yamagishi

National Institute of Informatics

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Matt Shannon

University of Cambridge

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Rasmus Dall

University of Edinburgh

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