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Synthese vocale neuronale multi-speaker francais — Matcha-Conformer + HiFi-GAN (ONNX)

Project description

lectura-multispeaker

Moteur de synthese vocale neuronale multi-speaker pour le francais — Matcha-Conformer + HiFi-GAN (ONNX).

Supporte 6 voix : siwis, ezwa, nadine, bernard, gilles, zeckou.

Installation

# Version minimale (API distante, zero deps)
pip install lectura-multispeaker

# Version locale (inference ONNX)
pip install lectura-multispeaker[onnx]

Pour le pipeline complet texte → audio, utilisez pip install lectura-tts-multi (inclut le G2P).

Utilisation

Depuis des phonemes IPA

from lectura_multispeaker import creer_engine

engine = creer_engine(mode="local")
engine.set_speaker("siwis")
result = engine.synthesize_phonemes(
    "bɔ̃ʒuʁ",
    phrase_type=0,
)
# result.samples: numpy float32
# result.sample_rate: 22050
# result.phoneme_timings: list[PhonemeTiming]

Lister les speakers disponibles

from lectura_multispeaker import liste_speakers
print(liste_speakers())  # ['siwis', 'ezwa', 'nadine', 'bernard', 'gilles', 'zeckou']

Controles prosodiques

Parametre Defaut Description
duration_scale 1.0 Vitesse globale
pitch_shift 0.0 Decalage F0 (demi-tons)
pitch_range 1.0 Variation F0
energy_scale 1.0 Intensite
pause_scale 1.0 Duree des pauses
phrase_type 0 0=decl, 1=inter, 2=excl, 3=susp
n_ode_steps 4 Pas ODE Matcha (plus = meilleur)

Architecture

  • Matcha-Conformer : phonemes → mel-spectrogramme via flow matching ODE (encodeur par speaker)
  • HiFi-GAN V1 : mel → audio 22050 Hz
  • Runtime : ONNX (pas de dependance PyTorch)

Emplacements des modeles

Recherche dans l'ordre :

  1. Parametre models_dir explicite
  2. $LECTURA_MODELS_DIR/tts_multispeaker/
  3. ~/.lectura/models/tts_multispeaker/
  4. Modeles embarques dans le package (version privee)

Licence

Licence proprietaire Lectura. Voir LICENCE.txt.

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