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ICMCS
2008
IEEE

Fast keyword detection with sparse time-frequency models

13 years 11 months ago
Fast keyword detection with sparse time-frequency models
We address the problem of keyword spotting in continuous speech streams when training and testing conditions can be different. We propose a keyword spotting algorithm based on sparse representation of speech signals in a time-frequency feature space. The training speech elements are jointly represented in a common subspace built on simple basis functions. The subspace is trained in order to capture the common time-frequency structures from different occurrences of the keywords to be spotted. The keyword spotting algorithm then employs a sliding window mechanism on speech streams. It computes the contribution of successive speech segments in the subspace of interest and evaluates the similarity with the training data. Experimental results on the TIMIT database show the effectiveness and the noise resilience of the low complexity spotting algorithm.
Effrosini Kokiopoulou, Pascal Frossard, Olivier Ve
Added 30 May 2010
Updated 30 May 2010
Type Conference
Year 2008
Where ICMCS
Authors Effrosini Kokiopoulou, Pascal Frossard, Olivier Verscheure
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