DocumentCode :
2445062
Title :
Fast computation of Gaussian likelihoods using low-rank matrix approximations
Author :
Gajjar, Mrugesh R. ; Sreenivas, T.V. ; Govindarajan, R.
Author_Institution :
Phys. Res. Lab., Ahmedabad, India
fYear :
2011
fDate :
4-7 Oct. 2011
Firstpage :
322
Lastpage :
327
Abstract :
Acoustic modeling using mixtures of multivariate Gaussians is the prevalent approach for many speech processing problems. Computing likelihoods against a large set of Gaussians is required as a part of many speech processing systems and it is the computationally dominant phase for LVCSR systems. We express the likelihood computation as a multiplication of matrices representing augmented feature vectors and Gaussian parameters. The computational gain of this approach over traditional methods is by exploiting the structure of these matrices and efficient implementation of their multiplication. In particular, we explore direct low-rank approximation of the Gaussian parameter matrix and indirect derivation of low-rank factors of the Gaussian parameter matrix by optimum approximation of the likelihood matrix. We show that both the methods lead to similar speedups but the latter leads to far lesser impact on the recognition accuracy. Experiments on a 1138 word vocabulary RM1 task using Sphinx 3.7 system show that, for a typical case the matrix multiplication approach leads to overall speedup of 46%. Both the low-rank approximation methods increase the speedup to around 60%, with the former method increasing the word error rate (WER) from 3.2% to 6.6%, while the latter increases the WER from 3.2% to 3.5%.
Keywords :
Gaussian processes; error statistics; matrix multiplication; speech recognition; Gaussian likelihood; Gaussian parameter matrix; LVCSR system; WER; acoustic modeling; feature vector; large vocabulary continuous speech recognition; low-rank matrix approximation; matrix multiplication; multivariate Gaussians; speech processing; word error rate; Acoustics; Approximation methods; Error analysis; Speech recognition; Training; Training data; Vectors; Acoustic Likelihood Computations; Low-rank Matrix Approximation; Speech Recognition;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Signal Processing Systems (SiPS), 2011 IEEE Workshop on
Conference_Location :
Beirut
ISSN :
2162-3562
Print_ISBN :
978-1-4577-1920-2
Type :
conf
DOI :
10.1109/SiPS.2011.6088983
Filename :
6088983
Link To Document :
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