Department of Otolaryngology-Head and Neck Surgery, Louisiana State University Health Sciences Center, New Orleans, Louisiana 70112, USA.
Department of Speech, Language, and Hearing Sciences, University of Arizona, Tucson, Arizona 85721, USA.
J Acoust Soc Am. 2022 Sep;152(3):1783. doi: 10.1121/10.0014177.
The harmonics-to-noise ratio (HNR) and other spectral noise parameters are important in clinical objective voice assessment as they could indicate the presence of nonharmonic phenomena, which are tied to the perception of hoarseness or breathiness. Existing HNR estimators are built on the voice signals to be nearly periodic (fixed over a short period), although voice pathology could induce involuntary slow modulation to void this assumption. This paper proposes the use of a deterministically time-varying harmonic model to improve the HNR measurements. To estimate the time-varying model, a two-stage iterative least squares algorithm is proposed to reduce model overfitting. The efficacy of the proposed HNR estimator is demonstrated with synthetic signals, simulated tremor signals, and recorded acoustic signals. Results indicate that the proposed algorithm can produce consistent HNR measures as the extent and rate of tremor are varied.
谐波噪声比(HNR)和其他频谱噪声参数在临床客观语音评估中很重要,因为它们可以表明存在非谐波现象,而这些现象与嘶哑或气息声的感知有关。现有的 HNR 估计器是基于几乎周期性的语音信号构建的(在短时间内保持固定),尽管语音病理学可能会导致无意识的缓慢调制,从而破坏这种假设。本文提出使用确定性时变谐波模型来提高 HNR 测量的精度。为了估计时变模型,提出了一种两阶段迭代最小二乘算法来减少模型过拟合。通过合成信号、模拟震颤信号和记录的声学信号验证了所提出的 HNR 估计器的有效性。结果表明,所提出的算法可以在震颤的程度和速率变化时产生一致的 HNR 测量值。