Audio Language Modeling using Perceptually-Guided Discrete Representations (2211.01223v2)
Abstract: In this work, we study the task of Audio LLMing, in which we aim at learning probabilistic models for audio that can be used for generation and completion. We use a state-of-the-art perceptually-guided audio compression model, to encode audio to discrete representations. Next, we train a transformer-based causal LLM using these representations. At inference time, we perform audio auto-completion by encoding an audio prompt as a discrete sequence, feeding it to the audio LLM, sampling from the model, and synthesizing the corresponding time-domain signal. We evaluate the quality of samples generated by our method on Audioset, the largest dataset for general audio to date, and show that it is superior to the evaluated baseline audio encoders. We additionally provide an extensive analysis to better understand the trade-off between audio-quality and language-modeling capabilities. Samples:link.
- Felix Kreuk (22 papers)
- Yaniv Taigman (28 papers)
- Adam Polyak (29 papers)
- Jade Copet (26 papers)
- Gabriel Synnaeve (97 papers)
- Yossi Adi (96 papers)
- Alexandre Défossez (26 papers)