Papers
arxiv:2607.09020

Phone Segmentation and Recognition through Phonological Activation Mapping

Published on Jul 10
· Submitted by
Shikhar Bharadwaj
on Jul 13
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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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Paper submitter
  • 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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