Title :
Tandem connectionist feature extraction for conventional HMM systems
Author :
Hermansky, Hynek ; Ellis, Daniel W. ; Sharma, Shantanu
Author_Institution :
Oregon Graduate Inst. of Sci. & Technol., Portland, OR, USA
Abstract :
Hidden Markov model speech recognition systems typically use Gaussian mixture models to estimate the distributions of decorrelated acoustic feature vectors that correspond to individual subword units. By contrast, hybrid connectionist-HMM systems use discriminatively-trained neural networks to estimate the probability distribution among subword units given the acoustic observations. In this work we show a large improvement in word recognition performance by combining neural-net discriminative feature processing with Gaussian-mixture distribution modeling. By training the network to generate the subword probability posteriors, then using transformations of these estimates as the base features for a conventionally-trained Gaussian-mixture based system, we achieve relative error rate reductions of 35% or more on the multicondition Aurora noisy continuous digits task
Keywords :
Gaussian processes; feature extraction; hidden Markov models; neural nets; speech recognition; Gaussian-mixture distribution modeling; base features; conventional HMM systems; conventionally-trained Gaussian-mixture based system; hidden Markov model speech recognition systems; multicondition Aurora noisy continuous digits task; neural-net discriminative feature processing; relative error rate reductions; subword probability posteriors; tandem connectionist feature extraction; transformations; word recognition; Decorrelation; Error analysis; Feature extraction; Gaussian distribution; Gaussian processes; Hidden Markov models; Neural networks; Noise reduction; Probability distribution; Speech recognition;
Conference_Titel :
Acoustics, Speech, and Signal Processing, 2000. ICASSP '00. Proceedings. 2000 IEEE International Conference on
Conference_Location :
Istanbul
Print_ISBN :
0-7803-6293-4
DOI :
10.1109/ICASSP.2000.862024