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Voicing detection based on adaptive aperiodicity thresholding for speech enhancement in non‐stationary noise
Author(s) -
CabañasMolero Pablo,
MartínezMuñoz Damian,
VeraCandeas Pedro,
RuizReyes Nicolas,
RodríguezSerrano Francisco José
Publication year - 2014
Publication title -
iet signal processing
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.384
H-Index - 42
eISSN - 1751-9683
pISSN - 1751-9675
DOI - 10.1049/iet-spr.2012.0224
Subject(s) - voice , speech enhancement , computer science , speech recognition , thresholding , noise (video) , noise measurement , pattern recognition (psychology) , noise power , noise reduction , background noise , speech processing , classifier (uml) , artificial intelligence , power (physics) , physics , telecommunications , quantum mechanics , image (mathematics)
In this study, the authors present a novel voicing detection algorithm which employs the well‐known aperiodicity measure to detect voiced speech in signals contaminated with non‐stationary noise. The method computes a signal‐adaptive decision threshold which takes into account the current noise level, enabling voicing detection by direct comparison with the extracted aperiodicity. This adaptive threshold is updated at each frame by making a simple estimate of the current noise power, and thus is adapted to fluctuating noise conditions. Once the aperiodicity is computed, the method only requires a small number of operations, and enables its implementation in challenging devices (such as hearing aids) if an efficient approximation of the difference function is employed to extract the aperiodicity. Evaluation over a database of speech sentences degraded by several types of noise reveals that the proposed voicing classifier is robust against different noises and signal‐to‐noise ratios. In addition, to evaluate the applicability of the method for speech enhancement, a simple F 0 ‐based speech enhancement algorithm integrating the proposed classifier is implemented. The system is shown to achieve competitive results, in terms of objective measures, when compared with other well‐known speech enhancement approaches.

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