Advanced Search
CS Search Google Search
Subscribers, please login

Published Articles >> Table of Contents >> Abstract

IEEE-INNS-ENNS International Joint Conference on Neural Networks (IJCNN'00)-Volume 5   p. 5097
The Regularized SNN-TA Model for Recognition of Noisy Speech

Full Article Text: Download PDF of full textBuy this articleGet full text from IEEE Xplore

DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/IJCNN.2000.861441
Send link to a friend

Abstract
The Segmental Neural Network (SNN) architecture was introduced at BBN by Zavaliagkos et al. for re-scoring the N-best hypothesis yielded by a standard Continuous Density hidden Markov model (CDHMM) applied to Automatic Speech Recognition. An enhanced connectionist model, called SNN with trainable amplitude of activation functions (SNN-TA) is first used in this paper instead of the CDHMM to perform the recognition of isolated words. Viterbi-based segmentation is then introduced, relying on the level building algorithm that can be combined with the SNN-TA to obtain a hybrid framework for continuous speech recognition. The present paradigm is applied to the recognition of isolated digits, collected in a real car environment under several noisy conditions (traffic, speed, road conditions, etc.) using a microphone placed far from the talker. We stress the fact that improving the generalization capabilities of the speech recognizer can increase robustness to noise. In this perspective, while CDHMMs completely lack of a proper regularization theory, a regularized SNN-TA model is discussed, which yields effective generalization and noise-tolerance, outperforming the CDHMM on the noisy task under consideration.
Additional Information

Citation:  Edmondo Trentin, Marco Matassoni, "The Regularized SNN-TA Model for Recognition of Noisy Speech," ijcnn, p. 5097,  IEEE-INNS-ENNS International Joint Conference on Neural Networks (IJCNN'00)-Volume 5,  2000

Similar Articles

Abstract Contents
Abstract
Citation




Free access to

  • Abstracts
  • Selected PDFs

Electronic subscribers login to:

  • Access HTML/PDFs of full text articles

Subscription information

Get a Web account

PDFs require Adobe Acrobat Reader.

Peer Review Notice

Give us Feedback