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Self-supervised Speech Comparison for L2 Phone, Rhythm, and Intonation Scoring

Primary research

#11

T1digested
Topic
LLM Judges
First seen
2026-07-16 19:07:57
Last seen
2026-07-16 19:07:57

Source raw items (1)

  • arXiv2026-07-16 19:06:49
    Self-supervised Speech Comparison for L2 Phone, Rhythm, and Intonation Scoring

    L2 speech assessment has traditionally focused on phonetic assessment, leaving the scoring of suprasegmental features such as rhythm and intonation underexplored. Moreover, assessment methods often require training with labeled L2 speech data, making them difficult to apply in low-resource settings. We investigate whether DTW over self-supervised WavLM representations can provide a text-free framework for assessing phonetic accuracy, rhythm, and intonation in English and Japanese L2 speech. Results show that a basic DTW-based approach that compares learner speech to native templates exceeds human agreement on holistic and sentence-level phonetic scoring. For rhythm, we introduce methods that measure the degree of warping in the DTW alignment path; our best method approaches human-level performance. For intonation, we combine DTW distance over prosodic residuals with pitch and intensity features, but performance remains more modest on some tasks. Our results point to self-supervised representations as a promising, text-free basis for multi-aspect pronunciation assessment.