Author: Fredrik Cumlin Email: fcumlin@gmail.com
This is the official implementation of the model LaMOSNet from the paper "Latent-based Neural Net for Non-intrusive Speech Quality Assessment". LaMOSNet is a non-intrusive speech quality metric that given an input signal, predicts the overall quality.
First, download the VCC2018 data, which can for example be done from here. Then run train.py, which depend on the following arguments:
--num_epochs: The number of epochs during training.--log_valid: The number of epochs between logging results on validation data.--log_epoch: The number of epochs between logging training losses.--data_path: Path to the data folder.--id_table: Path to the id_table folder.--save_path: Path for the best model to be saved.
This repository inherits from the unofficial MBNet implementation and the LDNet implementation .
MIT License
Copyright (c) 2024 Fredrik Cumlin, Royal Institute of Technology
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