The SIMPLE
4
ALL project created speech synthesis technology that learns from data with little or no expert supervision and continually improves itself, simply by being used.
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Public deliverables
D1.6 – to be published after final review
D2.1: Initial synthesis front end description
D2.2: Description of the final version of the front-end
D3.1: Automatic parameterization with WLP-based GIF-techniques
D3.2: Report describing initial version of deep layered models
D3.3: Evaluation of the new speech signal model in conjunction with HMM-based acoustic models
D3.4: Report describing the final version of the deep layered models
D3.5: Final evaluation report
D4.1: Learning from user-provided data
D4.2: Online learning for improving one, or more than one component
D4.3 – to be published after final review
D5.1: Acoustic and prosodic analysis of genres and speaking styles
D5.2: Final report on the implementation and evaluation of genre classification
D6.1: Project website / remote collaboration tools
D6.3 – to be published after final review
D6.4 – to be published after final review
D6.7 – to be published after final review
Internship reports
Bajibabu Bollepalli: Effect of MPEG audio compression on HMM-based speech synthesis
Jiunn Lin Wong: Realisation and simulation of the Mel log spectrum approximation filter
Dalia Popescu: Unsupervised Text Syllabification with Information from Audio
Srikanth Ronanki: Syllable based models for prosody modelling in HMM based speech synthesis
Jose Moreno: Effects of Noise on a Speaker-Adaptive Statistical Speech Synthesis System
Arturo Romero Blanco : Spanish Emotional Speech Synthesis
Jaime Lorenzo-Trueba: Towards Cross-lingual Emotion Transplantation
Ascension Gallardo: A Comparison of Open-Source Segmentation Architectures
Academic publications
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