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A Data-Centric Framework for Addressing Phonetic and Prosodic Challenges in Russian Speech Generative Models
Episode 988

A Data-Centric Framework for Addressing Phonetic and Prosodic Challenges in Russian Speech Generative Models

Daily Paper Cast

July 22, 202519m 42s

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🤗 Upvotes: 42 | cs.CL, cs.SD, eess.AS

Authors:
Kirill Borodin, Nikita Vasiliev, Vasiliy Kudryavtsev, Maxim Maslov, Mikhail Gorodnichev, Oleg Rogov, Grach Mkrtchian

Title:
A Data-Centric Framework for Addressing Phonetic and Prosodic Challenges in Russian Speech Generative Models

Arxiv:
http://arxiv.org/abs/2507.13563v1

Abstract:
Russian speech synthesis presents distinctive challenges, including vowel reduction, consonant devoicing, variable stress patterns, homograph ambiguity, and unnatural intonation. This paper introduces Balalaika, a novel dataset comprising more than 2,000 hours of studio-quality Russian speech with comprehensive textual annotations, including punctuation and stress markings. Experimental results show that models trained on Balalaika significantly outperform those trained on existing datasets in both speech synthesis and enhancement tasks. We detail the dataset construction pipeline, annotation methodology, and results of comparative evaluations.