Time vs. Layer: Locating Predictive Cues for Dysarthric Speech Descriptors in wav2vec 2.0
For researchers in pathological speech analysis, this work provides insights into how to best aggregate wav2vec 2.0 representations for different speech descriptors, though the findings are incremental.
The study investigates which components of wav2vec 2.0 representations are most informative for predicting five dysarthric speech descriptors. Results show intelligibility is best captured via layer-wise representations, while imprecise consonants, harsh voice, and monoloudness benefit from time-wise modeling; no clear advantage was found for inappropriate silences.
Wav2vec 2.0 (W2V2) has shown strong performance in pathological speech analysis by effectively capturing the characteristics of atypical speech. Despite its success, it remains unclear which components of its learned representations are most informative for specific downstream tasks. In this study, we address this question by investigating the regression of dysarthric speech descriptors using annotations from the Speech Accessibility Project dataset. We focus on five descriptors, each addressing a different aspect of speech or voice production: intelligibility, imprecise consonants, inappropriate silences, harsh voice and monoloudness. Speech representations are derived from a W2V2-based feature extractor, and we systematically compare layer-wise and time-wise aggregation strategies using attentive statistics pooling. Our results show that intelligibility is best captured through layer-wise representations, whereas imprecise consonants, harsh voice and monoloudness benefit from time-wise modeling. For inappropriate silences, no clear advantage could be observed for either approach.