SDAILGMMASJun 30, 2021

A Generative Model for Raw Audio Using Transformer Architectures

arXiv:2106.16036v338 citations
Originality Incremental advance
AI Analysis

This addresses audio synthesis for applications like music generation, but it is incremental as it builds on existing methods like wavenet.

The paper tackles raw audio synthesis at the waveform level using Transformer architectures, achieving up to 9% improvement over a wavenet baseline and an additional 2% gain with wider context conditioning.

This paper proposes a novel way of doing audio synthesis at the waveform level using Transformer architectures. We propose a deep neural network for generating waveforms, similar to wavenet. This is fully probabilistic, auto-regressive, and causal, i.e. each sample generated depends only on the previously observed samples. Our approach outperforms a widely used wavenet architecture by up to 9% on a similar dataset for predicting the next step. Using the attention mechanism, we enable the architecture to learn which audio samples are important for the prediction of the future sample. We show how causal transformer generative models can be used for raw waveform synthesis. We also show that this performance can be improved by another 2% by conditioning samples over a wider context. The flexibility of the current model to synthesize audio from latent representations suggests a large number of potential applications. The novel approach of using generative transformer architectures for raw audio synthesis is, however, still far away from generating any meaningful music, without using latent codes/meta-data to aid the generation process.

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