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Vietnamese speaker profiling (gender/dialect) with PhoWhisper/WavLM-family encoders.

Project description

Vietnamese Speaker Profiling

Finetune

python finetune.py --config configs/finetune.yaml

Eval:

python eval.py --checkpoint output/best_model --config configs/eval.yaml --test_name clean_test

Infer:

python infer.py --config configs/infer.yaml --audio path/to/audio.wav

Infer (Pho model on Hugging Face Hub)

python infer.py --config configs/infer_pho_hf.yaml --audio path/to/audio.wav

Install from PyPI (inference)

pip install vn-speaker-profiling
vn-speaker-profiling-infer --audio path/to/audio.wav

Publish to PyPI (maintainers)

python -m pip install -U build twine
python -m build
python -m twine upload dist/*

Datasets:

Pretrained Models:

In Kaggle:

Architecture:

    Audio -> Encoder (WavLM/HuBERT/Wav2Vec2/Whisper) -> Last Hidden [B,T,H]
                          |
                 Attentive Pooling [B,H]
                          |
                 Layer Normalization
                          |
                     Dropout(0.1)
                          |
          +---------------+---------------+
          |                               |
    Gender Head (2 layers)     Dialect Head (3 layers)
          |                               |
        [B,2]                           [B,3]

Supported encoders:
    - WavLM: microsoft/wavlm-base-plus, microsoft/wavlm-large
    - HuBERT: facebook/hubert-base-ls960, facebook/hubert-large-ls960-ft
    - Wav2Vec2: facebook/wav2vec2-base, facebook/wav2vec2-large-960h
    - Whisper: openai/whisper-base, openai/whisper-small, openai/whisper-medium

Result:

Mô hình Kích thước tham số Nhiệm vụ phân loại Acc. ViSpeech (Clean) Acc. ViSpeech (Noisy) Acc. ViMD (Baseline)
wavlm-base-plus ~94 triệu Gender 96.53% 97.35% 98.66%
Dialect 88.33% 84.41% 88.49%
wav2vec2-base ~95 triệu Gender 93.13% 95.59% 98.52%
Dialect 87.13% 83.63% 88.65%
hubert-base-ls960 ~96 triệu Gender 96.93% 96.67% 98.62%
Dialect 87.40% 82.55% 87.52%
spkrec-ecapa-voxceleb ~22 triệu Gender 96.80% 98.43% N/A
Dialect 65.33% 65.10% N/A
PhoWhisper-base ~73 triệu Gender 95.53% N/A 98.57%
Dialect 93.28% N/A 90.67%
wav2vec2-base-vi-vlsp2020 ~95 triệu Gender N/A N/A 98.72%
Dialect N/A N/A 90.61%

Model

https://drive.google.com/drive/folders/1UCOVh9ut8jHmCFfMKgwM2_Mi_3rGhd94?usp=sharing

Citation:

https://github.com/TranNguyenNB/ViSpeech

https://huggingface.co/datasets/nguyendv02/ViMD_Dataset

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