Title :
Non-Negative Factor Analysis of Gaussian Mixture Model Weight Adaptation for Language and Dialect Recognition
Author :
Bahari, Mohamad Hasan ; Dehak, Najim ; Van hamme, Hugo ; Burget, Lukas ; Ali, Asem M. ; Glass, James
Author_Institution :
Center for Process. Speech & Images, KU Leuven, Leuven, Belgium
Abstract :
Recent studies show that Gaussian mixture model (GMM) weights carry less, yet complimentary, information to GMM means for language and dialect recognition. However, state-of-the-art language recognition systems usually do not use this information. In this research, a non-negative factor analysis (NFA) approach is developed for GMM weight decomposition and adaptation. This modeling, which is conceptually simple and computationally inexpensive, suggests a new low-dimensional utterance representation method using a factor analysis similar to that of the i-vector framework. The obtained subspace vectors are then applied in conjunction with i-vectors to the language/dialect recognition problem. The suggested approach is evaluated on the NIST 2011 and RATS language recognition evaluation (LRE) corpora and on the QCRI Arabic dialect recognition evaluation (DRE) corpus. The assessment results show that the proposed adaptation method yields more accurate recognition results compared to three conventional weight adaptation approaches, namely maximum likelihood re-estimation, non-negative matrix factorization, and a subspace multinomial model. Experimental results also show that the intermediate-level fusion of i-vectors and NFA subspace vectors improves the performance of the state-of-the-art i-vector framework especially for the case of short utterances.
Keywords :
Gaussian processes; matrix decomposition; maximum likelihood estimation; mixture models; natural language processing; text analysis; DRE corpus; GMM weight adaptation; GMM weight decomposition; GMM weights; Gaussian mixture model weight adaptation; LRE corpora; NFA approach; NFA subspace vectors; NIST 2011 language recognition evaluation corpora; QCRI Arabic dialect recognition evaluation corpus; RATS language recognition evaluation corpora; dialect recognition; i-vector framework; intermediate-level fusion; language recognition systems; low-dimensional utterance representation method; maximum likelihood reestimation; nonnegative factor analysis approach; nonnegative matrix factorization; subspace multinomial model; subspace vectors; weight adaptation approaches; Maximum likelihood estimation; Optimization; Speech; Speech recognition; Support vector machine classification; Training; Vectors; Gaussian mixture model weight; Non-negative factor analysis; dialect recognition; language recognition; model adaptation;
Journal_Title :
Audio, Speech, and Language Processing, IEEE/ACM Transactions on
DOI :
10.1109/TASLP.2014.2319159