Estimating cepstrum of speech under the presence of noise using a joint prior of static and dynamic features
Li, D.E.N.G.; Droppo, J.; Acero, A.
IEEE Transactions on Speech and Audio Processing 12(3): 218-233
2004
ISSN/ISBN: 1063-6676
Accession: 075282668
PDF emailed within 1 workday: $29.90
Related References
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