SDCLASDec 28, 2019

A Comparative Study of Glottal Source Estimation Techniques

arXiv:2001.00840v1123 citations
AI Analysis

This work addresses the lack of comparative studies in speech processing for glottal flow estimation, providing insights for researchers and practitioners in voice analysis.

The study compared three glottal source estimation techniques on synthetic and real speech, finding that mixed-phase decomposition and closed-phase inverse filtering performed best on clean signals, while iterative and adaptive inverse filtering was more robust in noisy environments.

Source-tract decomposition (or glottal flow estimation) is one of the basic problems of speech processing. For this, several techniques have been proposed in the literature. However studies comparing different approaches are almost nonexistent. Besides, experiments have been systematically performed either on synthetic speech or on sustained vowels. In this study we compare three of the main representative state-of-the-art methods of glottal flow estimation: closed-phase inverse filtering, iterative and adaptive inverse filtering, and mixed-phase decomposition. These techniques are first submitted to an objective assessment test on synthetic speech signals. Their sensitivity to various factors affecting the estimation quality, as well as their robustness to noise are studied. In a second experiment, their ability to label voice quality (tensed, modal, soft) is studied on a large corpus of real connected speech. It is shown that changes of voice quality are reflected by significant modifications in glottal feature distributions. Techniques based on the mixed-phase decomposition and on a closed-phase inverse filtering process turn out to give the best results on both clean synthetic and real speech signals. On the other hand, iterative and adaptive inverse filtering is recommended in noisy environments for its high robustness.

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