StyleTTS2 — Basque Multispeaker TTS
This is a Basque text-to-speech (TTS) model based on the StyleTTS2 architecture, specifically adapted for Basque language synthesis. The model achieves good-quality Basque speech synthesis. The model was trained from scratch on the Basque multispeaker Sonora speech corpus.
Examples (playable):
Sample 1 — "Cesare Pavese XXI. mendeko idazle italiar esanguratzuenetakoa da."
Sample 2 — "Herriko errekan bakarrik korrika."
Main modifications:
- PL-BERT-eu: PL-BERT model trained with WordPiece tokenizer for phonemized Basque text.
- ASR-eu: ASR model trained with a subset of the multispeaker speech corpus. It uses the same architecture as the original ASR from StyleTTS2.
- Phonemizer: We used code developed by Aholab to generate IPA phonemes for training the model. You can see a demo of the Basque phonemizer at arrandi/phonemizer-eus-esp. Likewise, the code used to generate IPA phonemes can be found in the
phonemizerdirectory. We collapsed multi-character phonemes into single-character phonemes for better grapheme–phoneme alignment.
Model details
| Architecture | StyleTTS2 (from scratch) |
| Language | Basque (eu) |
| Speakers | Multispeaker (two speakers) |
| Text input | Basque IPA phonemes |
| Speech LM | WavLM-Base-Plus |
| Sample rate | 24 000 Hz |
| Decoder | HiFiGAN |
Training dataset
Sonora multispeaker Basque speech dataset.
- Number of speakers: two speakers
- Audio: 13,500 utterances per speaker, totalling 34 hours and 18 minutes.
- Dataset split: We used 100 samples for validation and 500 for testing.
- OOD dataset: We use a different text dataset as the Out-of-Distribution (OOD) dataset.
Training
Brief summary of training parameters used (from config_basque_multispeaker_phoneme_wavlm_800.yml):
- Device: cuda
- Stages: 1st-stage epochs = 50; 2nd-stage epochs = 30
- Batch: batch_size = 2
- Max length: max_len = 500
- Learning rates: lr = 0.0001; bert_lr = 1e-5; ft_lr = 1e-5
- Audio / features: sr = 24000; n_mels = 80; spectrogram (n_fft=2048, win_length=1200, hop_length=300)
- Model: multispeaker = true; n_token = 178 (phonemes); style_dim = 128; decoder = HiFiGAN
- Diffusion / schedule: diff_epoch = 10; joint_epoch = 15; estimate_sigma_data = true (sigma ≈ 0.2)
- Loss highlights: lambda_mel = 5.0; lambda_ce = 20.0; lambda_diff = 1.0
Files in this repository
| File | Description |
|---|---|
config_basque_multispeaker_phoneme_wavlm_800_2nd_normal.yml |
Training & model config → place at Models/Basque_Multispeaker_Phoneme_wavlm_normal/ |
epoch_2nd_00030.pth |
Main TTS checkpoint → place at Models/Basque_Multispeaker_Phoneme_wavlm_normal/ |
epoch_00200.pth |
Basque ASR / text aligner → place at Utils/ASR_basque/ |
step_4000000.t7 |
Phoneme PLBERT → place at Utils/PLBERT_phoneme/ |
Note: The JDC F0 extractor (
Utils/JDC/bst.t7) is not Basque-specific — download it from the original StyleTTS2 repository and place it atUtils/JDC/bst.t7.
Setup
# 1. Clone the code repository
git clone https://github.com/AArriandiaga/StyleTTS2_basque
cd StyleTTS2_basque
# 2. Install dependencies
pip install -r requirements.txt
# 3. Download model weights from this HF repo and place them:
mkdir -p Models/Basque_Multispeaker_Phoneme_wavlm_normal Utils/ASR_basque Utils/PLBERT_phoneme Utils/JDC
# Download bst.t7 from the original StyleTTS2 repo (not Basque-specific):
wget -P Utils/JDC https://github.com/yl4579/StyleTTS2/raw/main/Utils/JDC/bst.t7
# using huggingface_hub:
python - <<'EOF'
from huggingface_hub import hf_hub_download
import shutil
repo = "HiTZ/styletts2-basque"
files = {
"config_basque_multispeaker_phoneme_wavlm_800_2nd_normal.yml": "Models/Basque_Multispeaker_Phoneme_wavlm_normal/config_basque_multispeaker_phoneme_wavlm_800_2nd_normal.yml",
"epoch_2nd_00030.pth": "Models/Basque_Multispeaker_Phoneme_wavlm_normal/epoch_2nd_00030.pth",
"epoch_00200.pth": "Utils/ASR_basque/epoch_00200.pth",
"step_4000000.t7": "Utils/PLBERT_phoneme/step_4000000.t7",
}
# bst.t7 comes from the original StyleTTS2 repo — download separately:
# https://github.com/yl4579/StyleTTS2/tree/main/Utils/JDC
for hf_name, local_path in files.items():
src = hf_hub_download(repo_id=repo, filename=hf_name)
shutil.copy(src, local_path)
print(f"✓ {local_path}")
EOF
Inference
CLI:
python inference.py \
--config Models/Basque_Multispeaker_Phoneme_wavlm_normal/config_basque_multispeaker_phoneme_wavlm_800_2nd_normal.yml \
--model Models/Basque_Multispeaker_Phoneme_wavlm_normal/epoch_2nd_00030.pth \
--ref Demo/ref_antton.wav \
--text "Kaixo, zelan zaude?" \
--output output/kaixo.wav
Python API:
from inference import Synthesizer
synth = Synthesizer(
config='Models/Basque_Multispeaker_Phoneme_wavlm_normal/config_basque_multispeaker_phoneme_wavlm_800_2nd_normal.yml',
checkpoint='Models/Basque_Multispeaker_Phoneme_wavlm_normal/epoch_2nd_00030.pth',
default_ref='Demo/ref_antton.wav',
)
wav = synth.run("Kaixo, zelan zaude?")
synth.save(wav, "output/kaixo.wav")
# Different speaker
wav2 = synth.run("Arratsalde on!", ref='Demo/ref_maider.wav')
synth.save(wav2, "output/arratsalde.wav")
Key parameters for run():
| Parameter | Default | Description |
|---|---|---|
ref |
constructor default | Reference WAV for speaker style |
alpha |
0.3 | Timbre mixing (0 = reference, 1 = sampled) |
beta |
0.7 | Prosody mixing (0 = reference, 1 = sampled) |
diffusion_steps |
5 | Quality vs. speed trade-off |
embedding_scale |
1.0 | Expressiveness (>1 = more expressive) |
Reference speakers
Two reference audios are included in the repo under Demo/:
ref_antton.wav— male speakerref_maider.wav— female speaker
All credit goes to the authors of StyleTTS2.
Citation
@inproceedings{li2023styletts2,
title = {StyleTTS 2: Towards Human-Level Text-to-Speech through Style Diffusion and Adversarial Training with Large Speech Language Models},
author = {Li, Yinghao Aaron and Han, Cong and Mesgarani, Nima},
booktitle = {Advances in Neural Information Processing Systems},
year = {2023},
}
Additional Information
Author
Author: Ander Arriandiaga — Aholab (Hitz), EHU
Contact
For further information, please send an email to inma.hernaez@ehu.eus.
Copyright
Copyright(c) 2026 by Aholab, HiTZ.
License
Funding
This work is funded by the Ministerio para la Transformación Digital y de la Función Pública - Funded by EU – NextGenerationEU within the framework of the project Desarrollo de Modelos ALIA.