ASAISDJun 3, 2025

CapSpeech: Enabling Downstream Applications in Style-Captioned Text-to-Speech

arXiv:2506.02863v215 citationsh-index: 47
Originality Synthesis-oriented
AI Analysis

This work addresses a problem for researchers and developers in speech synthesis by providing a comprehensive dataset and benchmark, though it is incremental as it builds upon existing CapTTS advancements.

The paper tackles the lack of standardized datasets and downstream task research in style-captioned text-to-speech synthesis by introducing CapSpeech, a benchmark with over 10 million machine-annotated and nearly 0.36 million human-annotated audio-caption pairs, demonstrating high-fidelity and intelligible speech synthesis across diverse styles.

Recent advancements in generative artificial intelligence have significantly transformed the field of style-captioned text-to-speech synthesis (CapTTS). However, adapting CapTTS to real-world applications remains challenging due to the lack of standardized, comprehensive datasets and limited research on downstream tasks built upon CapTTS. To address these gaps, we introduce CapSpeech, a new benchmark designed for a series of CapTTS-related tasks, including style-captioned text-to-speech synthesis with sound events (CapTTS-SE), accent-captioned TTS (AccCapTTS), emotion-captioned TTS (EmoCapTTS), and text-to-speech synthesis for chat agent (AgentTTS). CapSpeech comprises over 10 million machine-annotated audio-caption pairs and nearly 0.36 million human-annotated audio-caption pairs. In addition, we introduce two new datasets collected and recorded by a professional voice actor and experienced audio engineers, specifically for the AgentTTS and CapTTS-SE tasks. Alongside the datasets, we conduct comprehensive experiments using both autoregressive and non-autoregressive models on CapSpeech. Our results demonstrate high-fidelity and highly intelligible speech synthesis across a diverse range of speaking styles. To the best of our knowledge, CapSpeech is the largest available dataset offering comprehensive annotations for CapTTS-related tasks. The experiments and findings further provide valuable insights into the challenges of developing CapTTS systems.

Foundations

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