Self-Attention for Audio Super-Resolution
- URL: http://arxiv.org/abs/2108.11637v1
- Date: Thu, 26 Aug 2021 08:05:07 GMT
- Title: Self-Attention for Audio Super-Resolution
- Authors: Nathana\"el Carraz Rakotonirina
- Abstract summary: We propose a network architecture for audio super-resolution that combines convolution and self-attention.
Attention-based Feature-Wise Linear Modulation (AFiLM) uses self-attention mechanism instead of recurrent neural networks to modulate the activations of the convolutional model.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Convolutions operate only locally, thus failing to model global interactions.
Self-attention is, however, able to learn representations that capture
long-range dependencies in sequences. We propose a network architecture for
audio super-resolution that combines convolution and self-attention.
Attention-based Feature-Wise Linear Modulation (AFiLM) uses self-attention
mechanism instead of recurrent neural networks to modulate the activations of
the convolutional model. Extensive experiments show that our model outperforms
existing approaches on standard benchmarks. Moreover, it allows for more
parallelization resulting in significantly faster training.
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