Metrics Based Quality Estimation of Speech Recognition Features
Volume 24, Issue 3 (2013), pp. 435–446
Pub. online: 1 January 2013
Type: Research Article
Received
1 September 2012
1 September 2012
Accepted
1 June 2013
1 June 2013
Published
1 January 2013
1 January 2013
Abstract
The performance of an automatic speech recognition system heavily depends on the used feature set. Quality of speech recognition features is estimated by classification error, but then the recognition experiments must be performed, including both front-end and back-end implementations. We propose a method for features quality estimation that does not require recognition experiments and accelerate automatic speech recognition system development. The key component of our method is usage of metrics right after front-end features computation. The experimental results show that our method is suitable for recognition systems with back-end Euclidean space classifiers.