go back

Hierarchical Spectro-Temporal Features for Robust Speech Recognition

Xavier Domont, Martin Heckmann, Frank Joublin, Christian Goerick, "Hierarchical Spectro-Temporal Features for Robust Speech Recognition", Proc. of International Conference on Acoustics, Speech, and Signal Processing (ICASSP), pp. 4417-4420, 2008.

Abstract

Previously we presented an auditory-inspired feed-forward architecture which achieves good performance in noisy conditions on a segmented word recognition task. In this paper we propose to use a modified version of this hierarchical model to generate features for standard Hidden Markov Models. To obtain these features we firstly compute the spectrograms using a Gammatone filterbank. A filtering over the channels permits to enhance the formant frequencies which are afterwards detected using Gabor-like receptive fields. Then the responses of the receptive fields are combined to complex features which span the whole frequency range and extend over three different time windows. The features have been evaluated on a single digit recognition task. The results show that their combination with MFCCs or RASTA features yields improved recognition scores in noise.



Download Bibtex file Download PDF

Search