Fine-tuned Spanish Voxpopuli v2 wav2vec2-base model for speech-to-phoneme task in Spanish
Fine-tuned facebook/wav2vec2-base-es-voxpopuli-v2 for Spanish speech-to-phoneme (without language model) using the train and validation splits of Multilingual Librispeech.
Audio samplerate for usage
When using this model, make sure that your speech input is sampled at 16kHz.
Output
As this model is specifically trained for a speech-to-phoneme task, the output is sequence of IPA-encoded words, without punctuation. If you don't read the phonetic alphabet fluently, you can use this excellent IPA reader website to convert the transcript back to audio synthetic speech in order to check the quality of the phonetic transcription.
Training procedure
The model has been finetuned on Multilingual Librispeech (ES) for 30 epochs on a 1xADA_6000 GPU at Cnam/LMSSC using a ddp strategy and gradient-accumulation procedure (256 audios per update, corresponding roughly to 25 minutes of speech per update -> 2k updates per epoch)
Learning rate schedule : Double Tri-state schedule
- Warmup from 1e-5 for 7% of total updates
- Constant at 1e-4 for 28% of total updates
- Linear decrease to 1e-6 for 36% of total updates
- Second warmup boost to 3e-5 for 3% of total updates
- Constant at 3e-5 for 12% of total updates
- Linear decrease to 1e-7 for remaining 14% of updates
The set of hyperparameters used for training are the same as those detailed in Annex B and Table 6 of wav2vec2 paper.
Usage (using the online Inference API)
Just record your voice on the ⚡ Inference API on this webpage, and then click on "Compute", that's all !
Usage (with HuggingSound library)
The model can be used directly using the HuggingSound library:
import pandas as pd
from huggingsound import SpeechRecognitionModel
model = SpeechRecognitionModel("Cnam-LMSSC/wav2vec2-spanish-phonemizer")
audio_paths = ["./test_rilettura_testo.wav", "./10179_11051_000021.flac"]
# No need for the Audio files to be sampled at 16 kHz here,
# they are automatically resampled by Huggingsound
transcriptions = model.transcribe(audio_paths)
# (Optionnal) Display results in a table :
## transcriptions is list of dicts also containing timestamps and probabilities !
df = pd.DataFrame(transcriptions)
df['Audio file'] = pd.DataFrame(audio_paths)
df.set_index('Audio file', inplace=True)
df[['transcription']]
Output :
| Audio file | Phonetic transcription (IPA) |
|---|---|
| ./prueba_revision_texto.wav | paɾeθia un tiβuɾon kompleto ðe βeɾas ke si asi si aoɾa koxemos a aθɛntwaða este βlak ðoɡ ʝa tendɾemos notiθjas ke embjaɾ a aθɛntwaða nwestɾo βwem patɾon el kaβaʎeɾo |
| ./10179_11051_000021.flac | pestaɲeaðo keðose en donde estaβa apoʝandose apenas en su muleta i kon los oxos klaβaðos en su kompaɲeɾo komo una βiβoɾa lista paɾa aβalanθaɾse |
Inference script (if you do not want to use the huggingsound library) :
import torch
from transformers import AutoModelForCTC, Wav2Vec2Processor
from datasets import load_dataset
import soundfile as sf # Or Librosa if you prefer to ...
MODEL_ID = "Cnam-LMSSC/wav2vec2-spanish-phonemizer"
model = AutoModelForCTC.from_pretrained(MODEL_ID)
processor = Wav2Vec2Processor.from_pretrained(MODEL_ID)
audio = sf.read('example.wav')
# Make sure you have a 16 kHz sampled audio file, or resample it !
inputs = processor(np.array(audio[0]),sampling_rate=16_000., return_tensors="pt")
with torch.no_grad():
logits = model(**inputs).logits
predicted_ids = torch.argmax(logits,dim = -1)
transcription = processor.batch_decode(predicted_ids)
print("Phonetic transcription : ", transcription)
Output :
'esˈtoj ˈmuj konˈtento ðe pɾesenˈtaɾles ˈnwestɾa soluˈsjon ˈpaɾa fonemiˈsaɾ ˈawðjos ˈfasilˈmente | funˈsjona βasˈtante ˈβjen'
Test Results:
In the table below, we report the Phoneme Error Rate (PER) of the model on Multilingual Librispeech (using the Spanish configs for the dataset of course) :
| Model | Test Set | PER |
|---|---|---|
| Cnam-LMSSC/wav2vec2-spanish-phonemizer | Multilingual Librispeech (Spanish) | 2.94% |
Citation
If you use this finetuned model for any publication, please use this to cite our work :
@misc {lmssc-wav2vec2-base-phonemizer-spanish_2026,
author = { Olivier, Malo },
title = { wav2vec2-spanish-phonemizer (Revision 4c60fe7) },
year = 2026,
url = { https://huggingface.co/Cnam-LMSSC/wav2vec2-spanish-phonemizer },
doi = { 10.57967/hf/8136 },
publisher = { Hugging Face }
}
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Dataset used to train Cnam-LMSSC/wav2vec2-spanish-phonemizer
Paper for Cnam-LMSSC/wav2vec2-spanish-phonemizer
Evaluation results
- Test PER on Multilingual Librispeech ES | Trained on Multilingual Librispeechself-reported2.940
- Val PER on Multilingual Librispeech ES | Trained on Multilingual Librispeechself-reported2.660