toplogo
Bejelentkezés

VoxHakka: A Freely Available Multi-Speaker Text-to-Speech System for Diverse Taiwanese Hakka Dialects


Alapfogalmak
VoxHakka is a freely available, high-quality multi-speaker text-to-speech system designed to synthesize speech in all six major dialects of Taiwanese Hakka, a critically under-resourced language.
Kivonat

The paper introduces VoxHakka, a text-to-speech (TTS) system for Taiwanese Hakka, a language with significant dialectal diversity. Taiwanese Hakka has six major dialects, and the language features complex phonology, including seven tones, diverse vowels, and syllable-final consonants.

To address the scarcity of publicly available Hakka speech corpora, the researchers employed a cost-effective approach using web scraping and automatic speech recognition (ASR)-based data cleaning techniques. This process resulted in a high-quality, multi-speaker, multi-dialect dataset suitable for TTS training.

The VoxHakka system is built upon the YourTTS framework, which enables high-quality and efficient speech synthesis while supporting zero-shot capabilities for unseen speakers and languages. The model is trained with dialect-specific data, allowing for the generation of speaker-aware Hakka speech.

Subjective listening tests using Comparative Mean Opinion Scores (CMOS) demonstrate that VoxHakka significantly outperforms existing publicly available Hakka TTS systems in terms of pronunciation accuracy, tone correctness, and overall naturalness. This work represents a significant advancement in Hakka language technology and provides a valuable resource for language preservation and revitalization efforts.

edit_icon

Összefoglaló testreszabása

edit_icon

Átírás mesterséges intelligenciával

edit_icon

Hivatkozások generálása

translate_icon

Forrás fordítása

visual_icon

Gondolattérkép létrehozása

visit_icon

Forrás megtekintése

Statisztikák
VoxHakka was trained on a total of 180.53 hours of transcribed Hakka speech data, collected from various online sources. After speech cleanup and silence trimming, the final dataset consisted of 140.31 hours of high-quality Hakka speech data. The dataset covers all six major Hakka dialects, with the Sixian and Hailu dialects being the most prevalent, accounting for 51.01 and 43.76 hours, respectively.
Idézetek
"VoxHakka is a freely available, CC-BY 4.0 licensed multi-speaker TTS system for all six major dialects of Taiwanese Hakka." "Evaluations using CMOS testing demonstrate VoxHakka's superior performance compared to commercially available Hakka TTS systems, particularly in terms of naturalness." "By making VoxHakka openly accessible, we hope to facilitate research, educational initiatives, and creative applications that contribute to the preservation and revitalization of Taiwanese Hakka."

Mélyebb kérdések

How can the VoxHakka system be further improved to enhance its pronunciation accuracy and better capture the nuances of Hakka dialects?

To enhance the pronunciation accuracy of the VoxHakka system and better capture the nuances of Hakka dialects, several strategies can be implemented: Improved Acoustic Modeling: Focusing on refining the acoustic models used in VoxHakka can significantly enhance pronunciation accuracy. This could involve experimenting with advanced neural network architectures, such as Transformer-based models, which have shown promise in capturing complex phonetic patterns and tonal variations inherent in Hakka dialects. Dialect-Specific Training: Given the significant dialectal variation within Taiwanese Hakka, creating separate models or fine-tuning the existing model for each dialect could lead to better performance. This would allow the system to learn the unique phonetic and tonal characteristics of each dialect more effectively. Enhanced Data Augmentation: Utilizing data augmentation techniques, such as pitch shifting, time stretching, and adding background noise, can help create a more robust training dataset. This would allow the model to generalize better and improve its performance on unseen data. Incorporation of Linguistic Features: Integrating linguistic features specific to Hakka, such as tone sandhi rules and syllable structures, into the training process can help the model understand the intricacies of Hakka pronunciation. This could involve developing a more sophisticated grapheme-to-phoneme (G2P) conversion system that accounts for these features. User Feedback Mechanism: Implementing a feedback loop where users can provide corrections or suggestions on synthesized speech can help continuously improve the model. This user-generated data can be invaluable for refining pronunciation and capturing dialectal nuances.

What other techniques or approaches could be explored to address the data scarcity challenge for low-resource languages like Taiwanese Hakka?

Addressing the data scarcity challenge for low-resource languages like Taiwanese Hakka requires innovative approaches: Crowdsourcing Data Collection: Engaging the Hakka-speaking community in data collection efforts can help gather more diverse and representative speech samples. Platforms can be developed to allow speakers to contribute recordings, which can then be annotated and used for training. Leveraging Social Media and Online Content: Utilizing social media platforms, podcasts, and video content featuring Hakka speakers can provide a rich source of authentic speech data. Web scraping techniques can be employed to extract audio and corresponding transcriptions from these sources. Partnerships with Educational Institutions: Collaborating with universities and language institutes can facilitate the creation of high-quality speech corpora. These institutions often have access to resources and expertise that can aid in data collection and annotation. Synthetic Data Generation: Using existing TTS systems to generate synthetic speech data can help augment the training dataset. This approach can be particularly useful for dialects with limited available data, as it allows for the creation of diverse speech samples. Utilizing Transfer Learning: Implementing transfer learning techniques from related languages or dialects can help bootstrap the training process. By leveraging models trained on more resource-rich languages, researchers can adapt these models to better suit the characteristics of Taiwanese Hakka.

How can the VoxHakka system be integrated into language learning and preservation initiatives to promote the use and awareness of Taiwanese Hakka among younger generations?

Integrating the VoxHakka system into language learning and preservation initiatives can significantly promote the use and awareness of Taiwanese Hakka among younger generations through the following strategies: Interactive Language Learning Apps: Developing mobile applications that utilize VoxHakka for language learning can provide an engaging platform for younger users. These apps can include features such as pronunciation practice, vocabulary building, and interactive storytelling, making learning fun and accessible. Audiobooks and Educational Content: Creating audiobooks and educational materials in Taiwanese Hakka using the VoxHakka system can help expose younger audiences to the language. This content can be used in schools and community programs to foster interest and understanding of Hakka culture. Virtual Language Tutors: Implementing VoxHakka in virtual tutoring platforms can provide personalized language learning experiences. By allowing users to practice speaking with a synthesized voice that accurately represents Hakka pronunciation, learners can gain confidence and improve their skills. Cultural Events and Workshops: Organizing cultural events and workshops that showcase the capabilities of the VoxHakka system can raise awareness about the language. Demonstrations of the TTS system can highlight its potential for preserving Hakka heritage and encourage participation from the community. Social Media Campaigns: Utilizing social media to promote the VoxHakka system and its applications can reach a broader audience. Campaigns can feature short clips of synthesized Hakka speech, educational content, and testimonials from users, creating a buzz around the language and its importance. By implementing these strategies, the VoxHakka system can play a pivotal role in revitalizing Taiwanese Hakka and ensuring its continued relevance among younger generations.
0
star