Datasets:
Dataset Viewer (First 5GB)
audio
dict | speaker
stringclasses 47
values |
---|---|
{"array":[-0.02239990234375,-0.024627685546875,-0.024810791015625,-0.0263671875,-0.029693603515625,-(...TRUNCATED) | id00000 |
{"array":[0.006866455078125,0.01446533203125,0.000732421875,-0.049102783203125,-0.029022216796875,-0(...TRUNCATED) | id00000 |
{"array":[0.00921630859375,0.0050048828125,0.003936767578125,0.003509521484375,-0.001068115234375,-0(...TRUNCATED) | id00000 |
{"array":[-0.0296630859375,-0.02618408203125,-0.0341796875,-0.044158935546875,-0.049285888671875,-0.(...TRUNCATED) | id00000 |
{"array":[-0.1104736328125,-0.1129150390625,-0.1162109375,-0.1171875,-0.110595703125,-0.09912109375,(...TRUNCATED) | id00000 |
{"array":[-0.00341796875,-0.000030517578125,-0.00628662109375,-0.0064697265625,0.001953125,-0.003509(...TRUNCATED) | id00000 |
{"array":[-0.02764892578125,-0.021484375,-0.017608642578125,-0.013946533203125,-0.010772705078125,-0(...TRUNCATED) | id00000 |
{"array":[0.035736083984375,0.026824951171875,0.02294921875,0.02496337890625,0.031219482421875,0.036(...TRUNCATED) | id00000 |
{"array":[-0.00164794921875,-0.000701904296875,0.001800537109375,0.004119873046875,0.0057373046875,0(...TRUNCATED) | id00000 |
{"array":[0.08880615234375,0.085693359375,0.05535888671875,0.049468994140625,0.0362548828125,0.04321(...TRUNCATED) | id00000 |
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in Data Studio
The dataset contains three subsets:
- train: Official training set (
VoxVietnam-T
) used in the paper (1,256 speakers, 161,457 samples). - train_small:
VoxVietnam-T-small
, sampled from VoxVietnam-T to have the same size as Vietnam-Celeb (879 speakers, 83,000 samples). - The
VoxVietnam-T-noisy
in the paper is not uploaded since it is not clean for supervised training, just for ablation studies in the paper only.
[Update 29 Mar, 2025] The VoxVietnam-E and VoxVietnam-H are labelled by volunteers without visual information. Our team released another independent test set, called VoxVietnam-O
, verified by us by listening and watching the video segments for the highest accuracy. The speakers in VoxVietnam-O
are sampled from the test
partition. You can download the data and test list for VoxVietnam-O
here. We encourage researchers to use VoxVietnam-O for evaluation.
Here are the results on VoxVietnam-O for reference. We use Ruijie Tao's implementation of ECAPA-TDNN:
Train | EER (%) | minDCF (%) |
---|---|---|
VoxVietnam-T | 3.03 | 0.4781 |
Vietnam-Celeb-T | 3.25 | 0.5376 |
VoxVietnam-T-small | 3.96 | 0.5273 |
VoxVietnam-T-noisy | 6.91 | 0.6813 |
Vietnam-Celeb-T + VoxVietnam-T | 3.34 | 0.5286 |
[Update 03 Jan, 2025] Our paper has been accepted to ICASSP 2025! The preprint is available at: https://arxiv.org/abs/2501.00328.
Please cite our work as:
@INPROCEEDINGS{10890124,
author={Vu, Hoang Long and Dat, Phuong Tuan and Nhi, Pham Thao and Hao, Nguyen Song and Thu Trang, Nguyen Thi},
booktitle={ICASSP 2025 - 2025 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)},
title={VoxVietnam: a Large-Scale Multi-Genre Dataset for Vietnamese Speaker Recognition},
year={2025},
volume={},
number={},
pages={1-5},
doi={10.1109/ICASSP49660.2025.10890124}}
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