DocumentCode :
730717
Title :
Unsupervised learning of acoustic features via deep canonical correlation analysis
Author :
Weiran Wang ; Arora, Raman ; Livescu, Karen ; Bilmes, Jeff A.
Author_Institution :
TTI, Chicago, IL, USA
fYear :
2015
fDate :
19-24 April 2015
Firstpage :
4590
Lastpage :
4594
Abstract :
It has been previously shown that, when both acoustic and articulatory training data are available, it is possible to improve phonetic recognition accuracy by learning acoustic features from this multi-view data with canonical correlation analysis (CCA). In contrast with previous work based on linear or kernel CCA, we use the recently proposed deep CCA, where the functional form of the feature mapping is a deep neural network. We apply the approach on a speaker-independent phonetic recognition task using data from the University of Wisconsin X-ray Microbeam Database. Using a tandem-style recognizer on this task, deep CCA features improve over earlier multi-view approaches as well as over articulatory inversion and typical neural network-based tandem features. We also present a new stochastic training approach for deep CCA, which produces both faster training and better-performing features.
Keywords :
acoustic signal processing; correlation methods; feature extraction; neural nets; speaker recognition; speech processing; CCA; University of Wisconsin X-ray Microbeam Database; acoustic features; articulatory training data; deep canonical correlation analysis; deep neural network; feature mapping; speaker-independent phonetic recognition task; unsupervised learning; Artificial intelligence; Kernel; Mel frequency cepstral coefficient; Principal component analysis; Speech; Speech recognition; Training; XRMB; articulatory measurements; deep canonical correlation analysis; multi-view learning; neural networks;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Acoustics, Speech and Signal Processing (ICASSP), 2015 IEEE International Conference on
Conference_Location :
South Brisbane, QLD
Type :
conf
DOI :
10.1109/ICASSP.2015.7178840
Filename :
7178840
Link To Document :
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