AI RESEARCH
FMS$^2$: Unified Flow Matching for Segmentation and Synthesis of Thin Structures
arXiv CS.CV
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ArXi:2603.13659v1 Announce Type: new Segmenting thin structures like infrastructure cracks and anatomical vessels is a task hampered by topology-sensitive geometry, high annotation costs, and poor generalization across domains. Existing methods address these challenges in isolation. We propose FMS$^2$, a flow-matching framework with two modules. (1) SegFlow is a 2.96M-parameter segmentation model built on a standard encoder-decoder backbone that recasts prediction as continuous image $\rightarrow$ mask transport.