Paper data
Title:
Time-frequency Quantile-based Noise Estimation Author(s): Evans Nicholas, University of Wales Swansea Mason John, University of Wales Swansea Page numbers in the proceedings: Volume I pp 539-542 Session: Echo Cancellation and Speech Enhancement
Paper abstract
This paper addresses the problem of noise estimation in the context of speech processing. A recently proposed quantile-based approach to noise estimation has the merit of not relying on the explicit detection of speech, non-speech boundaries. Here this approach is extended to both time and frequency. The resultant time-frequency quantile-based noise estimation is shown to give superior ASR performance. Results on the Aurora 2 Distributed Speech Recognition Database show an average relative performance improvement over the ETSI front-end baseline of 35%. The merits of the new system include: the relatively few parameters to optimise, the independence of absolute signal levels and minimal latency, all of which assist in real-time implementations.
Paper
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