d531364f1771e0972c1d11c334a0efb4-Paper-Conference.pdf
–Neural Information Processing Systems
Personalized models have demonstrated remarkable success in understanding and generating concepts provided by users. However, existing methods use separate concept tokens for understanding and generation, treating these tasks in isolation. This may result in limitations for generating images with complex prompts. For example, given the concept bo, generating " bo wearing its hat" without additional textual descriptions of its hat. We call this kind of generation personalized attribute-reasoning generation. To address the limitation, we present UniCTokens, a novel framework that effectively integrates personalized information into a unified vision language model (VLM) for understanding and generation. UniCTokens trains a set of unified concept tokens to leverage complementary semantics, boosting two personalized tasks. Moreover, we propose a progressive training strategy with three stages: understanding warm-up, bootstrapping generation from under-Equal contribution.
Neural Information Processing Systems
Jun-22-2026, 21:47:01 GMT