Speech Intelligibility Assessment of Dysarthric Speech by using Goodness of Pronunciation with Uncertainty Quantification
This paper proposes an improved Goodness of Pronunciation (GoP) that utilizes Uncertainty Quantification (UQ) for automatic speech intelligibility assessment for dysarthric speech. Current GoP methods rely heavily on neural network-driven overconfident predictions, which is unsuitable for assessing...
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Zusammenfassung: | This paper proposes an improved Goodness of Pronunciation (GoP) that utilizes
Uncertainty Quantification (UQ) for automatic speech intelligibility assessment
for dysarthric speech. Current GoP methods rely heavily on neural
network-driven overconfident predictions, which is unsuitable for assessing
dysarthric speech due to its significant acoustic differences from healthy
speech. To alleviate the problem, UQ techniques were used on GoP by 1)
normalizing the phoneme prediction (entropy, margin, maxlogit, logit-margin)
and 2) modifying the scoring function (scaling, prior normalization). As a
result, prior-normalized maxlogit GoP achieves the best performance, with a
relative increase of 5.66%, 3.91%, and 23.65% compared to the baseline GoP for
English, Korean, and Tamil, respectively. Furthermore, phoneme analysis is
conducted to identify which phoneme scores significantly correlate with
intelligibility scores in each language. |
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DOI: | 10.48550/arxiv.2305.18392 |