COT-FM: Cluster-wise Optimal Transport Flow Matching

arXiv cs.CV / 3/17/2026

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Key Points

  • COT-FM introduces a cluster-wise approach to flow matching that reshapes the probability path to enable faster and more reliable generation.
  • It addresses curved trajectories caused by random or batchwise couplings, reducing discretization error and improving sample quality.
  • The method clusters target samples and assigns each cluster a dedicated source distribution derived by reversing pretrained FM models, enabling local transport accuracy.
  • It is plug-and-play and requires no changes to the model architecture, and it consistently speeds up sampling across 2D data, image benchmarks, and robotic manipulation tasks.
  • The work demonstrates broad applicability and potential impact on practical generative modeling pipelines.

Abstract

We introduce COT-FM, a general framework that reshapes the probability path in Flow Matching (FM) to achieve faster and more reliable generation. FM models often produce curved trajectories due to random or batchwise couplings, which increase discretization error and reduce sample quality. COT-FM fixes this by clustering target samples and assigning each cluster a dedicated source distribution obtained by reversing pretrained FM models. This divide-and-conquer strategy yields more accurate local transport and significantly straighter vector fields, all without changing the model architecture. As a plug-and-play approach, COT-FM consistently accelerates sampling and improves generation quality across 2D datasets, image generation benchmarks, and robotic manipulation tasks.