This repository contains the framework for training speaker recognition models described in the paper 'In defence of metric learning for speaker recognition'.
pip install -r requirements.txt
The following script can be used to download and prepare the VoxCeleb dataset for training.
python ./dataprep.py --save_path data --download --user USERNAME --password PASSWORD
python ./dataprep.py --save_path data --extract
python ./dataprep.py --save_path data --convert
In order to use data augmentation, also run:
python ./dataprep.py --save_path data --augment
In addition to the Python dependencies, wget
and ffmpeg
must be installed on the system.
- AM-Softmax:
python ./trainSpeakerNet.py --model ResNetSE34L --log_input True --encoder_type SAP --trainfunc amsoftmax --save_path exps/exp1 --nClasses 5994 --batch_size 200 --scale 30 --margin 0.3
- Angular prototypical:
python ./trainSpeakerNet.py --model ResNetSE34L --log_input True --encoder_type SAP --trainfunc angleproto --save_path exps/exp2 --nPerSpeaker 2 --batch_size 200
The arguments can also be passed as --config path_to_config.yaml
. Note that the configuration file overrides the arguments passed via command line.
A pretrained model, described in [1], can be downloaded from here.
You can check that the following script returns: EER 2.1792
. You will be given an option to save the scores.
python ./trainSpeakerNet.py --eval --model ResNetSE34L --log_input True --trainfunc angleproto --save_path exps/test --eval_frames 400 --initial_model baseline_lite_ap.model
A larger model trained with online data augmentation, described in [2], can be downloaded from here.
The following script should return: EER 1.1771
.
python ./trainSpeakerNet.py --eval --model ResNetSE34V2 --log_input True --encoder_type ASP --n_mels 64 --trainfunc softmaxproto --save_path exps/test --eval_frames 400 --initial_model baseline_v2_ap.model
Softmax (softmax)
AM-Softmax (amsoftmax)
AAM-Softmax (aamsoftmax)
GE2E (ge2e)
Prototypical (proto)
Triplet (triplet)
Angular Prototypical (angleproto)
ResNetSE34L (SAP, ASP)
ResNetSE34V2 (SAP, ASP)
VGGVox40 (SAP, TAP, MAX)
--augment True
enables online data augmentation, described in [2].
You can add new models and loss functions to models
and loss
directories respectively. See the existing definitions for examples.
-
Use
--mixedprec
flag to enable mixed precision training. This is recommended for Tesla V100, GeForce RTX 20 series or later models. -
Use
--distributed
flag to enable distributed training.-
GPU indices should be set using the command
export CUDA_VISIBLE_DEVICES=0,1,2,3
. -
Evaluation is not performed between epochs during training.
-
If you are running more than one distributed training session, you need to change the port.
-
At every epoch, the whole dataset is passed through each GPU once. Therefore
test_interval
andmax_epochs
must be divided by the number of GPUs for the same number of forward passes as single GPU training.
-
The VoxCeleb datasets are used for these experiments.
The train list should contain the identity and the file path, one line per utterance, as follows:
id00000 id00000/youtube_key/12345.wav
id00012 id00012/21Uxsk56VDQ/00001.wav
The train list for VoxCeleb2 can be download from here and the test list for VoxCeleb1 from here.
- Model definitions
VGG-M-40
in [1] isVGGVox
in the repository.Thin ResNet-34
in [1] isResNetSE34
in the repository.Fast ResNet-34
in [1] isResNetSE34L
in the repository.H / ASP
in [2] isResNetSE34V2
in the repository.
-
For metric learning objectives, the batch size in the paper is
nPerSpeaker
multiplied bybatch_size
in the code. For the batch size of 800 in the paper, use--nPerSpeaker 2 --batch_size 400
,--nPerSpeaker 3 --batch_size 266
, etc. -
The models have been trained with
--max_frames 200
and evaluated with--max_frames 400
. -
You can get a good balance between speed and performance using the configuration below.
python ./trainSpeakerNet.py --model ResNetSE34L --trainfunc angleproto --batch_size 400 --nPerSpeaker 2
Please cite [1] if you make use of the code. Please see here for the full list of methods used in this trainer.
[1] In defence of metric learning for speaker recognition
@inproceedings{chung2020in,
title={In defence of metric learning for speaker recognition},
author={Chung, Joon Son and Huh, Jaesung and Mun, Seongkyu and Lee, Minjae and Heo, Hee Soo and Choe, Soyeon and Ham, Chiheon and Jung, Sunghwan and Lee, Bong-Jin and Han, Icksang},
booktitle={Interspeech},
year={2020}
}
[2] Clova baseline system for the VoxCeleb Speaker Recognition Challenge 2020
@article{heo2020clova,
title={Clova baseline system for the {VoxCeleb} Speaker Recognition Challenge 2020},
author={Heo, Hee Soo and Lee, Bong-Jin and Huh, Jaesung and Chung, Joon Son},
journal={arXiv preprint arXiv:2009.14153},
year={2020}
}
Copyright (c) 2020-present NAVER Corp.
Permission is hereby granted, free of charge, to any person obtaining a copy
of this software and associated documentation files (the "Software"), to deal
in the Software without restriction, including without limitation the rights
to use, copy, modify, merge, publish, distribute, sublicense, and/or sell
copies of the Software, and to permit persons to whom the Software is
furnished to do so, subject to the following conditions:
The above copyright notice and this permission notice shall be included in
all copies or substantial portions of the Software.
THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR
IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY,
FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE
AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER
LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM,
OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN
THE SOFTWARE.