coqui-tts/TTS/encoder
Enno Hermann 39fe38bda4 refactor: use save_fsspec() from Trainer 2023-11-17 01:18:23 +01:00
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configs Make style (#1405) 2022-03-16 12:13:55 +01:00
models Fix Speaker Consistency Loss (SCL) (#2364) 2023-02-27 09:14:00 +03:00
utils refactor: use save_fsspec() from Trainer 2023-11-17 01:18:23 +01:00
README.md Update model file extension (#1422) 2022-03-22 17:55:00 +01:00
__init__.py REBASED: Transform Speaker Encoder in a Generic Encoder and Implement Emotion Encoder training support (#1349) 2022-03-11 14:43:40 +01:00
dataset.py Make style (#1405) 2022-03-16 12:13:55 +01:00
losses.py Make style (#1405) 2022-03-16 12:13:55 +01:00
requirements.txt REBASED: Transform Speaker Encoder in a Generic Encoder and Implement Emotion Encoder training support (#1349) 2022-03-11 14:43:40 +01:00

README.md

Speaker Encoder

This is an implementation of https://arxiv.org/abs/1710.10467. This model can be used for voice and speaker embedding.

With the code here you can generate d-vectors for both multi-speaker and single-speaker TTS datasets, then visualise and explore them along with the associated audio files in an interactive chart.

Below is an example showing embedding results of various speakers. You can generate the same plot with the provided notebook as demonstrated in this video.

Download a pretrained model from Released Models page.

To run the code, you need to follow the same flow as in TTS.

  • Define 'config.json' for your needs. Note that, audio parameters should match your TTS model.
  • Example training call python speaker_encoder/train.py --config_path speaker_encoder/config.json --data_path ~/Data/Libri-TTS/train-clean-360
  • Generate embedding vectors python speaker_encoder/compute_embeddings.py --use_cuda true /model/path/best_model.pth model/config/path/config.json dataset/path/ output_path . This code parses all .wav files at the given dataset path and generates the same folder structure under the output path with the generated embedding files.
  • Watch training on Tensorboard as in TTS