AI RESEARCH

Cycle-Consistent Tuning for Layered Image Decomposition

arXiv CS.CV

ArXi:2602.20989v3 Announce Type: replace Disentangling visual layers in real-world images is a persistent challenge in vision and graphics, as such layers often involve non-linear and globally coupled interactions, including shading, reflection, and perspective distortion. In this work, we present an in-context image decomposition framework that leverages large diffusion foundation models for layered separation. We focus on the challenging case of logo-object decomposition, where the goal is to disentangle a logo from the surface on which it appears while faithfully preserving both layers.