Paper
F3-Tokenizer: Taming Audio Autoencoder Latents for Understanding and Generation
arXiv:2606.06357v1 Announce Type: cross Abstract: Continuous audio autoencoders reconstruct waveforms well but often produce latents with weak structure for understanding, while self-supervised audio encoders capture semantics but are not directly decodable. This mismatch complicates a single audio tokenizer that must support both understanding and generation. We adapt continuous autoencoder latents to this setting with two components: a noise-regularized autoencoder bottleneck and a latent-side representation encoder. The bottleneck uses channel normalization and stochastic perturbation inst…
Authors:
Topics
Relevant entities
People
Linked people will appear here.
Related coverage
Linked coverage will appear here.
Related events
Linked events will appear here.
Related discussions
Related discussion nodes will appear here.