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Wiki Cascaded-Gaussian Mixture Regression » Historique » Révision 8

Révision 7 (Thomas Hueber, 14/02/2017 11:44) → Révision 8/12 (Thomas Hueber, 14/02/2017 11:45)

h1. Cascaded-Gaussian Mixture Regression (C-GMR) 

 h2. What is C-GMR? 

 Cascaded Gaussian Mixture Regression or C-GMR is a general framework for adapting a GMR (Gaussian Mixture Regression) trained on a large dataset of input-output joint observations, using a limited set of input-only observations. It was originaly developed in the context of speech processing fpr adapting an acoustic-articulatory inversion GMM trained on a reference speaker, to a new speaker, given a small amount of audio-only observations. In particular, C-GMR framework includes the "Integrated C-GMR" model (IC-GMR) and the Joint-GMR which combine 2 consecutive GMR in a single probabilistic model. For these models, we derived both the exact EM-based training algorithm and inference equation. 
 
 h2. How-to-cite 

 * Hueber, T., Girin, L., Alameda-Pineda, X., Bailly, G. (2015), "Speaker-Adaptive Acoustic-Articulatory Inversion using Cascaded Gaussian Mixture Regression", in IEEE/ACM Transactions on Audio, Speech, and Language Processing, vol. 23, no. 12, pp. 2246-2259 
 * Girin, L, Hueber, T., Alameda-Pineda, X., (2017) X ,(2017) Extending the Cascaded Gaussian Mixture Regression Framework for Cross-Speaker Acoustic-Articulatory Mapping, in IEEE/ACM Transactions on Audio, Speech, and Language Processing, vol. 25, no. 3, pp. 662-673 
 
 h2. Source code 

 The Matlab source code for training and using the Integrated C-GMR    and the Joint-GMR can be downloaded from the C-GMR git repository https://git.gipsa-lab.grenoble-inp.fr/cgmr.git 
 
 h2. Contributors 

 * Dr. Thomas Hueber, CNRS researcher, GIPSA-lab (Grenoble, France) 
 * Dr. Laurent Girin, Professor at Grenoble-INP, GIPSA-lab/INRIA (Grenoble, France) 
 * Dr. Xavier Alameda-Pineda, Researcher at UNITN (Trento, Italy) 
 * Dr. Gérard Bailly, CNRS researcher, GIPSA-lab (Grenoble, France) 
 
 h2. Contact 

 thomas.hueber@gipsa-lab.fr