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EEND (End-to-End Neural Diarization)

EEND (End-to-End Neural Diarization) is a neural-network-based speaker diarization method.

The EEND extension for various number of speakers is also provided in this repository.

Install tools

Requirements

  • NVIDIA CUDA GPU
  • CUDA Toolkit (8.0 <= version <= 10.1)

Install kaldi and python environment

cd tools
make

Test recipe (mini_librispeech)

Configuration

Data preparation

cd egs/mini_librispeech/v1
./run_prepare_shared.sh

Run training, inference, and scoring

./run.sh
  • If you use encoder-decoder based attractors [3], modify run.sh to use config/eda/{train,infer}.yaml
  • See RESULT.md and compare with your result.

CALLHOME two-speaker experiment

Configuraition

Data preparation

cd egs/callhome/v1
./run_prepare_shared.sh
# If you want to conduct 1-4 speaker experiments, run below.
# You also have to set paths to your corpora properly.
./run_prepare_shared_eda.sh

Self-attention-based model using 2-speaker mixtures

./run.sh

BLSTM-based model using 2-speaker mixtures

local/run_blstm.sh

Self-attention-based model with EDA using 1-4-speaker mixtures

./run_eda.sh

References

[1] Yusuke Fujita, Naoyuki Kanda, Shota Horiguchi, Kenji Nagamatsu, Shinji Watanabe, " End-to-End Neural Speaker Diarization with Permutation-free Objectives," Proc. Interspeech, pp. 4300-4304, 2019

[2] Yusuke Fujita, Naoyuki Kanda, Shota Horiguchi, Yawen Xue, Kenji Nagamatsu, Shinji Watanabe, " End-to-End Neural Speaker Diarization with Self-attention," Proc. ASRU, pp. 296-303, 2019

[3] Shota Horiguchi, Yusuke Fujita, Shinji Watanabe, Yawen Xue, Kenji Nagamatsu, " End-to-End Speaker Diarization for an Unknown Number of Speakers with Encoder-Decoder Based Attractors," Proc. INTERSPEECH, 2020

Citation

@inproceedings{Fujita2019Interspeech,
 author={Yusuke Fujita and Naoyuki Kanda and Shota Horiguchi and Kenji Nagamatsu and Shinji Watanabe},
 title={{End-to-End Neural Speaker Diarization with Permutation-free Objectives}},
 booktitle={Interspeech},
 pages={4300--4304}
 year=2019
}