PyTorch Implementation of ByteDance's Cross-speaker Emotion Transfer Based on Speaker Condition Layer Normalization and Semi-Supervised Training in Text-To-Speech

Overview

Cross-Speaker-Emotion-Transfer - PyTorch Implementation

PyTorch Implementation of ByteDance's Cross-speaker Emotion Transfer Based on Speaker Condition Layer Normalization and Semi-Supervised Training in Text-To-Speech.

Quickstart

DATASET refers to the names of datasets such as RAVDESS in the following documents.

Dependencies

You can install the Python dependencies with

pip3 install -r requirements.txt

Also, install fairseq (official document, github) to utilize LConvBlock. Please check here to resolve any issue on installing it. Note that Dockerfile is provided for Docker users, but you have to install fairseq manually.

Inference

You have to download the pretrained models and put them in output/ckpt/DATASET/.

To extract soft emotion tokens from a reference audio, run

python3 synthesize.py --text "YOUR_DESIRED_TEXT" --speaker_id SPEAKER_ID --ref_audio REF_AUDIO_PATH --restore_step RESTORE_STEP --mode single --dataset DATASET

Or, to use hard emotion tokens from an emotion id, run

python3 synthesize.py --text "YOUR_DESIRED_TEXT" --speaker_id SPEAKER_ID --emotion_id EMOTION_ID --restore_step RESTORE_STEP --mode single --dataset DATASET

The dictionary of learned speakers can be found at preprocessed_data/DATASET/speakers.json, and the generated utterances will be put in output/result/.

Batch Inference

Batch inference is also supported, try

python3 synthesize.py --source preprocessed_data/DATASET/val.txt --restore_step RESTORE_STEP --mode batch --dataset DATASET

to synthesize all utterances in preprocessed_data/DATASET/val.txt. Please note that only the hard emotion tokens from a given emotion id are supported in this mode.

Training

Datasets

The supported datasets are

  • RAVDESS: This portion of the RAVDESS contains 1440 files: 60 trials per actor x 24 actors = 1440. The RAVDESS contains 24 professional actors (12 female, 12 male), vocalizing two lexically-matched statements in a neutral North American accent. Speech emotions includes calm, happy, sad, angry, fearful, surprise, and disgust expressions. Each expression is produced at two levels of emotional intensity (normal, strong), with an additional neutral expression.

Your own language and dataset can be adapted following here.

Preprocessing

  • For a multi-speaker TTS with external speaker embedder, download ResCNN Softmax+Triplet pretrained model of philipperemy's DeepSpeaker for the speaker embedding and locate it in ./deepspeaker/pretrained_models/.

  • Run

    python3 prepare_align.py --dataset DATASET
    

    for some preparations.

    For the forced alignment, Montreal Forced Aligner (MFA) is used to obtain the alignments between the utterances and the phoneme sequences. Pre-extracted alignments for the datasets are provided here. You have to unzip the files in preprocessed_data/DATASET/TextGrid/. Alternately, you can run the aligner by yourself.

    After that, run the preprocessing script by

    python3 preprocess.py --dataset DATASET
    

Training

Train your model with

python3 train.py --dataset DATASET

Useful options:

  • To use Automatic Mixed Precision, append --use_amp argument to the above command.
  • The trainer assumes single-node multi-GPU training. To use specific GPUs, specify CUDA_VISIBLE_DEVICES=<GPU_IDs> at the beginning of the above command.

TensorBoard

Use

tensorboard --logdir output/log

to serve TensorBoard on your localhost. The loss curves, synthesized mel-spectrograms, and audios are shown.

Notes

  • The current implementation is not trained in a semi-supervised way due to the small dataset size. But it can be easily activated by specifying target speakers and passing no emotion ID with no emotion classifier loss.
  • In Decoder, 15 X 1 LConv Block is used instead of 17 X 1 due to memory issues.
  • Two options for embedding for the multi-speaker TTS setting: training speaker embedder from scratch or using a pre-trained philipperemy's DeepSpeaker model (as STYLER did). You can toggle it by setting the config (between 'none' and 'DeepSpeaker').
  • DeepSpeaker on RAVDESS dataset shows clear identification among speakers. The following figure shows the T-SNE plot of extracted speaker embedding.

  • For vocoder, HiFi-GAN and MelGAN are supported.

Citation

Please cite this repository by the "Cite this repository" of About section (top right of the main page).

References

Comments
  • loading state dict ——size mismatch

    loading state dict ——size mismatch

    I have a problem when I use your pre-trained model for synthesis. However, the following error happens:

    RuntimeError: Error(s) in loading state_dict for XSpkEmoTrans: size mismatch for duratin_predictor.lconv_stack.0.conv_layer.weight: copying a param with shape torch.Size([2, 3]) from checkpoint, the shape in current model is torch.Size([2, 1, 3]). size mismatch for decoder.lconv_stack.0.conv_layer.weight: copying a param with shape torch.Size([8, 15]) from checkpoint, the shape in current model is torch.Size([8, 1, 15]). size mismatch for decoder.lconv_stack.1.conv_layer.weight: copying a param with shape torch.Size([8, 15]) from checkpoint, the shape in current model is torch.Size([8, 1, 15]). size mismatch for decoder.lconv_stack.2.conv_layer.weight: copying a param with shape torch.Size([8, 15]) from checkpoint, the shape in current model is torch.Size([8, 1, 15]). size mismatch for decoder.lconv_stack.3.conv_layer.weight: copying a param with shape torch.Size([8, 15]) from checkpoint, the shape in current model is torch.Size([8, 1, 15]). size mismatch for decoder.lconv_stack.4.conv_layer.weight: copying a param with shape torch.Size([8, 15]) from checkpoint, the shape in current model is torch.Size([8, 1, 15]). size mismatch for decoder.lconv_stack.5.conv_layer.weight: copying a param with shape torch.Size([8, 15]) from checkpoint, the shape in current model is torch.Size([8, 1, 15]).

    opened by cythc 2
  • Closed Issue

    Closed Issue

    Hi, I synthesized some samples with the provided pretrained models and the speaker embeedding from philipperemy's DeepSpeaker repo. However, the sampled results were bad in that all of the words were garbled and I could not hear any words.

    I am not sure if I am doing anything wrong since I just cloned your repository, downloaded the RAVDESS data and did everything listed in the README.md. Based on how I was able to generate samples, I do not think I am doing anything wrong, but was anyone able to synthesize good speech? And to the author of this repo @keonlee9420 do you mind uploading some samples generated from the pretrained models from the README.md?

    Thanks in advance.

    opened by jinny1208 0
  • The generated wav is not good

    The generated wav is not good

    Hi, thank you for open source the wonderful work ! I followed your instructions 1) install lightconv_cuda, 2) download the checkpoint, 3) download the speaker embedding npy. However, the generated result is not good.

    Below is my running command

    python3 synthesize.py \
      --text "Hello world" \
      --speaker_id Actor_22 \
      --emotion_id sad \
      --restore_step 450000 \
      --mode single \
      --dataset RAVDESS
    
    # sh run.sh 
    2022-11-30 13:45:22.626404: I tensorflow/stream_executor/platform/default/dso_loader.cc:53] Successfully opened dynamic library libcudart.so.11.0
    Device of XSpkEmoTrans: cuda
    Removing weight norm...
    Raw Text Sequence: Hello world
    Phoneme Sequence: {HH AH0 L OW1 W ER1 L D}
    

    ENV

    python 3.6.8
    fairseq                 0.10.2
    torch                   1.7.0+cu110
    CUDA 11.0
    

    Hello world_Actor_22_sad

    Hello world_Actor_22_sad.wav.zip

    opened by pangtouyuqqq 1
  • Synthesis with other person out of RAVDESS

    Synthesis with other person out of RAVDESS

    Hello author, Firstly, thank you for giving this repo, it is really nice. I have a question that:

    1. I download CMU data with single person with 100 audios and make speaker embedding vector and synthesis with this, the performance is not good. I cannot detect any words.
    2. Should we need to fine-tuning deep-speaker model to generate speaker embedding with my data.

    Thank you

    opened by hathubkhn 5
  • Error using the pretrained model

    Error using the pretrained model

    I'm trying to run synthesize with the pretrained model, like such:

    python3 synthesize.py --text "This sentence is a test" --speaker_id Actor_01 --emotion_id neutral --restore_step 450000  --dataset RAVDESS --mode single
    

    but I get an error in layer size:

    Traceback (most recent call last):
      File "synthesize.py", line 206, in <module>
        model = get_model(args, configs, device, train=False,
      File "/home/jrings/diviai/installs/Cross-Speaker-Emotion-Transfer/utils/model.py", line 27, in get_model
        model.load_state_dict(model_dict, strict=False)
      File "<...>/torch/nn/modules/module.py", line 1604, in load_state_dict
        raise RuntimeError('Error(s) in loading state_dict for {}:\n\t{}'.format(
    RuntimeError: Error(s) in loading state_dict for XSpkEmoTrans:
    	size mismatch for emotion_emb.etl.embed: copying a param with shape torch.Size([8, 64]) from checkpoint, the shape in current model is torch.Size([9, 64]).
    	size mismatch for duratin_predictor.lconv_stack.0.conv_layer.weight: copying a param with shape torch.Size([2, 1, 3]) from checkpoint, the shape in current model is torch.Size([2, 3]).
    	size mismatch for decoder.lconv_stack.0.conv_layer.weight: copying a param with shape torch.Size([8, 1, 15]) from checkpoint, the shape in current model is torch.Size([8, 15]).
    	size mismatch for decoder.lconv_stack.1.conv_layer.weight: copying a param with shape torch.Size([8, 1, 15]) from checkpoint, the shape in current model is torch.Size([8, 15]).
    	size mismatch for decoder.lconv_stack.2.conv_layer.weight: copying a param with shape torch.Size([8, 1, 15]) from checkpoint, the shape in current model is torch.Size([8, 15]).
    	size mismatch for decoder.lconv_stack.3.conv_layer.weight: copying a param with shape torch.Size([8, 1, 15]) from checkpoint, the shape in current model is torch.Size([8, 15]).
    	size mismatch for decoder.lconv_stack.4.conv_layer.weight: copying a param with shape torch.Size([8, 1, 15]) from checkpoint, the shape in current model is torch.Size([8, 15]).
    	size mismatch for decoder.lconv_stack.5.conv_layer.weight: copying a param with shape torch.Size([8, 1, 15]) from checkpoint, the shape in current model is torch.Size([8, 15]).
    
    opened by jrings 1
  • speaker embedding npy file not found

    speaker embedding npy file not found

    Hi,

    I am facing the following issue while synthesizing using pretrained model.

    Removing weight norm... Traceback (most recent call last): File "synthesize.py", line 234, in )) if load_spker_embed else None File "/home/sagar/tts/Cross-Speaker-Emotion-Transfer/venv/lib/python3.7/site-packages/numpy/lib/npyio.py", line 417, in load fid = stack.enter_context(open(os_fspath(file), "rb")) FileNotFoundError: [Errno 2] No such file or directory: './preprocessed_data/RAVDESS/spker_embed/Actor_19-spker_embed.npy'

    Please suggest any way out. Thanks in advance -Sagar

    opened by raikarsagar 4
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