AI RESEARCH

Semantic-Aware Prefix Learning for Token-Efficient Image Generation

arXiv CS.CV

ArXi:2603.25249v1 Announce Type: new Visual tokenizers play a central role in latent image generation by bridging high-dimensional images and tractable generative modeling. However, most existing tokenizers are still trained with reconstruction-dominated objectives, which often yield latent representations that are only weakly grounded in high-level semantics. Recent approaches improve semantic alignment, but typically treat semantic signals as auxiliary regularization rather than making them functionally necessary for representation learning.