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.
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