2020 IEEE International Symposium on Signal Processing and Information Technology (ISSPIT) 2020
DOI: 10.1109/isspit51521.2020.9408968
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Spectral refinement with adaptive window-size selection for voicing detection and fundamental frequency estimation

Abstract: Spectral refinement (SR) offers a computationally inexpensive means of generating a refined (higher resolution) signal spectrum by linearly combining the spectra of shorter, contiguous signal segments. The benefit of this method has previously been demonstrated on the problem of fundamental frequency (F0) estimation in speech processing -specifically for the improved estimation of very low F0. One drawback of SR is, however, the poorer detection of voicing onsets due to the Heisenberg-Gabor limit on time and f… Show more

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“…We employ the voicing detection scheme suggested in [10] as the harmonic indicator η(l). The clean speech reference is low-pass filtered to the narrowband (0 to 4 kHz) first because voiced frames are more structured in this bandwidth.…”
Section: Harmonic Indicatormentioning
confidence: 99%
“…We employ the voicing detection scheme suggested in [10] as the harmonic indicator η(l). The clean speech reference is low-pass filtered to the narrowband (0 to 4 kHz) first because voiced frames are more structured in this bandwidth.…”
Section: Harmonic Indicatormentioning
confidence: 99%