SURE is a new standardized framework for evaluating and training speech foundation models and Speech LLMs to improve comparability and reproducibility under realistic conditions.
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CLD integrates convex optimization and ADMM in JAX to deliver 97-98% accuracy for language detection robust to accents under low-resource conditions, with claimed theoretical stability guarantees.
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A Unified and Reproducible Experimentation Framework for Speech Understanding
SURE is a new standardized framework for evaluating and training speech foundation models and Speech LLMs to improve comparability and reproducibility under realistic conditions.
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Convex Low-resource Accent-Robust Language Detection in Speech Recognition
CLD integrates convex optimization and ADMM in JAX to deliver 97-98% accuracy for language detection robust to accents under low-resource conditions, with claimed theoretical stability guarantees.