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Main Authors: Rosero, Karen, Yeo, Eunjung, Mortensen, David R., Slot, Cortney Van't, Hallac, Rami R., Busso, Carlos
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.19231
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author Rosero, Karen
Yeo, Eunjung
Mortensen, David R.
Slot, Cortney Van't
Hallac, Rami R.
Busso, Carlos
author_facet Rosero, Karen
Yeo, Eunjung
Mortensen, David R.
Slot, Cortney Van't
Hallac, Rami R.
Busso, Carlos
contents We present ChiReSSD, a speech reconstruction framework that preserves children speaker's identity while suppressing mispronunciations. Unlike prior approaches trained on healthy adult speech, ChiReSSD adapts to the voices of children with speech sound disorders (SSD), with particular emphasis on pitch and prosody. We evaluate our method on the STAR dataset and report substantial improvements in lexical accuracy and speaker identity preservation. Furthermore, we automatically predict the phonetic content in the original and reconstructed pairs, where the proportion of corrected consonants is comparable to the percentage of correct consonants (PCC), a clinical speech assessment metric. Our experiments show Pearson correlation of 0.63 between automatic and human expert annotations, highlighting the potential to reduce the manual transcription burden. In addition, experiments on the TORGO dataset demonstrate effective generalization for reconstructing adult dysarthric speech. Our results indicate that disentangled, style-based TTS reconstruction can provide identity-preserving speech across diverse clinical populations.
format Preprint
id arxiv_https___arxiv_org_abs_2509_19231
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Finding My Voice: Generative Reconstruction of Disordered Speech for Automated Clinical Evaluation
Rosero, Karen
Yeo, Eunjung
Mortensen, David R.
Slot, Cortney Van't
Hallac, Rami R.
Busso, Carlos
Sound
Artificial Intelligence
Computation and Language
We present ChiReSSD, a speech reconstruction framework that preserves children speaker's identity while suppressing mispronunciations. Unlike prior approaches trained on healthy adult speech, ChiReSSD adapts to the voices of children with speech sound disorders (SSD), with particular emphasis on pitch and prosody. We evaluate our method on the STAR dataset and report substantial improvements in lexical accuracy and speaker identity preservation. Furthermore, we automatically predict the phonetic content in the original and reconstructed pairs, where the proportion of corrected consonants is comparable to the percentage of correct consonants (PCC), a clinical speech assessment metric. Our experiments show Pearson correlation of 0.63 between automatic and human expert annotations, highlighting the potential to reduce the manual transcription burden. In addition, experiments on the TORGO dataset demonstrate effective generalization for reconstructing adult dysarthric speech. Our results indicate that disentangled, style-based TTS reconstruction can provide identity-preserving speech across diverse clinical populations.
title Finding My Voice: Generative Reconstruction of Disordered Speech for Automated Clinical Evaluation
topic Sound
Artificial Intelligence
Computation and Language
url https://arxiv.org/abs/2509.19231