Los puntos clave no están disponibles para este artículo en este momento.
In previous work we have developed the theory and demonstrated the promise of the Missing Data approach to robust Automatic Speech Recognition. This technique is based on hard decisions as to whether each time-frequency pixel is either reliable or unreliable. In this paper we replace these discrete decisions with soft estimates of the probability that each pixel is reliable. We adapt the probability calculation to use these estimates as weighting factors for the complementary reliable/unreliable interpretations for each feature vector component. Experiments using the TIDigits connected digit recognition task demonstrate that this technique affords significant performance improvements at low SNRs. 1. INTRODUCTION In previous work 2, 5, 6 we have developed the theory and demonstrated the promise of the Missing Data approach to robust Automatic Speech Recognition. In this technique, spectral-temporal regions uncontaminated by noise are identified and CDHMM recognition methods are ...
Barker et al. (Mon,) studied this question.