Department of English Language and Linguistics, Institute of English and American Studies, Faculty of Arts and Humanities, Heinrich Heine University Düsseldorf, Düsseldorf, 40225, Germany.
Department of Linguistics, University of Florida, Gainesville, Florida, 32611-5454, USA.
J Acoust Soc Am. 2024 Aug 1;156(2):1367-1379. doi: 10.1121/10.0028299.
Predictions of gradient degree of lenition of voiceless and voiced stops in a corpus of Argentine Spanish are evaluated using three acoustic measures (minimum and maximum intensity velocity and duration) and two recurrent neural network (Phonet) measures (posterior probabilities of sonorant and continuant phonological features). While mixed and inconsistent predictions were obtained across the acoustic metrics, sonorant and continuant probability values were consistently in the direction predicted by known factors of a stop's lenition with respect to its voicing, place of articulation, and surrounding contexts. The results suggest the effectiveness of Phonet as an additional or alternative method of lenition measurement. Furthermore, this study has enhanced the accessibility of Phonet by releasing the trained Spanish Phonet model used in this study and a pipeline with step-by-step instructions for training and inferencing new models.
使用三种声学度量(最小和最大强度速度和持续时间)和两种递归神经网络(Phonet)度量(清音和延续音音系特征的后验概率)评估了阿根廷西班牙语语料库中清浊塞音弱化程度的预测。虽然在声学指标上得到了混合和不一致的预测,但清音和延续音概率值始终与已知的浊音塞音弱化因素的方向一致,这些因素与浊音塞音的发声、发音部位和周围环境有关。结果表明,Phonet 作为一种额外的或替代的弱化测量方法是有效的。此外,通过发布本研究中使用的训练有素的西班牙语 Phonet 模型以及带有逐步说明的训练和推理新模型的管道,本研究提高了 Phonet 的可访问性。