Phone Segmentation and Recognition through Phonological Activation Mapping
Abstract
Phone segmentation and recognition are inherently related tasks, yet modern approaches typically model them separately. We argue that phonetic structure is already latent in the representations of self-supervised speech models (S3Ms), and one only needs to steer them to solve both tasks. We leverage S3M-based Phonological Activation Mapping (SPAM), which maps each S3M representation frame to a vector of phonological feature activations, such as voicing and nasality. On top of SPAM, we introduce two simple but effective lightweight, gradient-descent-free prediction heads: a recognition head and a segmentation head. Our method requires less than a minute of phonetic transcriptions, and generalizes to unseen phones during training. Across a diverse range of datasets, our approach attains strong segmentation and recognition performance.
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- What it does: Solves phone segmentation and phone recognition jointly, instead of modeling them as separate tasks.
- Core idea: Phonetic structure is already latent inside self-supervised speech model (S3M) representations. We develop a method to use these S3M representations efficiently.
- Method: Uses SPAM (S3M-based Phonological Activation Mapping), which converts each frame into phonological feature activations like voicing and nasality.
- Architecture: Two lightweight, gradient-descent-free prediction heads on top of SPAM, one for recognition and another for segmentation.
- Data efficiency: Requires less than one minute of time-aligned phonetic transcriptions to work.
- Generalization: Handles phones unseen during training, which is useful for low-resource languages and zero-shot phonetic analysis.
- Results: SOTA phone segmentation and strong recognition performance across a diverse range of datasets.
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