merlin - This is now the official location of the Merlin project.

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This repository contains the Neural Network (NN) based Speech Synthesis System developed at the Centre for Speech Technology Research (CSTR), University of Edinburgh.Merlin is a toolkit for building Deep Neural Network models for statistical parametric speech synthesis. It must be used in combination with a front-end text processor (e.g., Festival) and a vocoder (e.g., STRAIGHT or WORLD).

http://www.cstr.ed.ac.uk/projects/merlin/
https://github.com/CSTR-Edinburgh/merlin

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