--- language: - rw pipeline_tag: text-to-speech license: cc tags: - TTS - Kinyarwanda - Text to speech --- ## Model Description This model is an end-to-end deep-learning-based Kinyarwanda Text-to-Speech (TTS). The model was trained using the Coqui's TTS library, and the YourTTS[1] architecture. # Usage Install the Coqui's TTS library: ``` pip install git+https://github.com/coqui-ai/TTS@0910cb76bcd85df56bf43654bb31427647cdfd0d#egg=TTS ``` Download the files from this repo, then run: ``` tts --text "text" --model_path model.pth --encoder_path SE_checkpoint.pth.tar --encoder_config_path config_se.json --config_path config.json --speakers_file_path speakers.pth --speaker_wav conditioning_audio.wav --out_path out.wav ``` Where the conditioning audio is a wav file(s) to condition a multi-speaker TTS model with a Speaker Encoder, you can give multiple file paths. The d_vectors is computed as their average. # References [1] [YourTTS paper](https://arxiv.org/pdf/2112.02418.pdf) [2] [Kinyarwanda TTS: Using a multi-speaker dataset to build a Kinyarwanda TTS model](https://openreview.net/pdf?id=1gLgrqWnHF)