AI RESEARCH

Reward-Aware Trajectory Shaping for Few-step Visual Generation

arXiv CS.CV

ArXi:2604.14910v1 Announce Type: new Achieving high-fidelity generation in extremely few sampling steps has long been a central goal of generative modeling. Existing approaches largely rely on distillation-based frameworks to compress the original multi-step denoising process into a few-step generator. However, such methods inherently constrain the student to imitate a stronger multi-step teacher, imposing the teacher as an upper bound on student performance. We argue that