Dynamic nsNet2: Efficient Deep Noise Suppression with Early Exiting
Sound
2024-03-11 v1 Machine Learning
Audio and Speech Processing
Abstract
Although deep learning has made strides in the field of deep noise suppression, leveraging deep architectures on resource-constrained devices still proved challenging. Therefore, we present an early-exiting model based on nsNet2 that provides several levels of accuracy and resource savings by halting computations at different stages. Moreover, we adapt the original architecture by splitting the information flow to take into account the injected dynamism. We show the trade-offs between performance and computational complexity based on established metrics.
Cite
@article{arxiv.2308.16678,
title = {Dynamic nsNet2: Efficient Deep Noise Suppression with Early Exiting},
author = {Riccardo Miccini and Alaa Zniber and Clément Laroche and Tobias Piechowiak and Martin Schoeberl and Luca Pezzarossa and Ouassim Karrakchou and Jens Sparsø and Mounir Ghogho},
journal= {arXiv preprint arXiv:2308.16678},
year = {2024}
}
Comments
Accepted at the MLSP 2023