Class-Based Parametric Approximation to Histogram Equalization for ASR.

IEEE Signal Process. Lett.(2012)

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摘要
This letter assesses an improved equalization transformation for robust speech recognition in noisy environments. The proposal is an evolution of the parametric approximation to Histogram Equalization named PEQ into a two-step algorithm dealing separately with environmental and acoustic mismatch. A first parametric equalization is done to eliminate environmental mismatch. These equalized data are divided into classes, and parametrically re-equalized using class specific references to reduce the acoustic mismatch. Experiments have been conducted for Aurora 2 and Aurora 4 databases. A comparative analysis of the experimental results shows significant benefits for databases with high acoustic variability like Aurora 4.
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关键词
approximation theory,speech recognition,ASR,Aurora 2 databases,Aurora 4 databases,PEQ,acoustic mismatch reduction,class-based parametric approximation,environmental mismatch,environmental mismatch elimination,histogram equalization,improved equalization transformation,parametric equalization,robust speech recognition,two-step algorithm,Feature compensation,histogram equalization,parametric equalization,probabilistic classes,robust ASR
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