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Asr Wav2vec2 Dvoice Wolof

Developed by speechbrain
This is an automatic speech recognition model for Wolof, based on the wav2vec 2.0 architecture, trained on the DVoice dataset, supporting Wolof speech transcription.
Downloads 44
Release Time : 6/9/2022

Model Overview

This model is an end-to-end automatic speech recognition system, combining a pre-trained wav2vec 2.0 model with CTC/Attention mechanisms, specifically designed for Wolof speech recognition tasks.

Model Features

Pre-trained model fine-tuning
Fine-tuned from the facebook/wav2vec2-large-xlsr-53 pre-trained model, leveraging the advantages of large-scale pre-training
End-to-end solution
Provides a complete workflow from audio input to text output, including audio preprocessing and transcription
Low-resource language support
Specifically optimized for low-resource languages like Wolof, helping to advance African language technologies

Model Capabilities

Wolof speech recognition
Audio file transcription
Real-time speech-to-text

Use Cases

Speech transcription
Wolof speech transcription
Convert Wolof speech content into text
Validation set CER 4.81%, WER 16.25%
Language technology development
African language technology research
Provides a foundation for speech technology research in African low-resource languages
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