<div class="csl-bib-body">
<div class="csl-entry">Nguyen, K., Le, A. T., Pham, T., Huber, M., Peters, J., & Vu, M. N. (2025). FlowMP: Learning Motion Fields for Robot Planning with Conditional Flow Matching. In <i>2025 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)</i> (pp. 11291–11297). IEEE. https://doi.org/10.1109/IROS60139.2025.11246537</div>
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dc.identifier.uri
http://hdl.handle.net/20.500.12708/226133
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dc.description.abstract
Prior flow matching methods in robotics have primarily learned velocity fields to morph one distribution of trajectories into another. In this work, we extend flow matching to capture second-order trajectory dynamics, incorporating acceleration effects either explicitly in the model or implicitly through the learning objective. Unlike diffusion models, which rely on a noisy forward process and iterative denoising steps, flow matching trains a continuous transformation (flow) that directly maps a simple prior distribution to the target trajectory distribution without any denoising procedure. By modeling trajectories with second-order dynamics, our approach ensures that the generated robot motions are smooth and physically executable, avoiding the jerky or dynamically infeasible trajectories that first-order models might produce. We empirically demonstrate that this second-order conditional flow matching yields superior performance on motion planning benchmarks, achieving smoother trajectories and higher success rates than baseline planners. These findings highlight the advantage of learning acceleration-aware motion fields, as our method outperforms existing motion planning methods in terms of trajectory quality and planning success. Our source code is available at: https://github.com/mkhangg/flow_mp.
en
dc.language.iso
en
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dc.subject
Robot motion
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dc.subject
Intelligent robots
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dc.subject
Planning
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dc.title
FlowMP: Learning Motion Fields for Robot Planning with Conditional Flow Matching
en
dc.type
Inproceedings
en
dc.type
Konferenzbeitrag
de
dc.contributor.affiliation
The University of Texas at Arlington, United States of America (the)
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dc.contributor.affiliation
Technical University of Darmstadt, Germany
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dc.contributor.affiliation
University of Manchester, United Kingdom of Great Britain and Northern Ireland (the)
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dc.contributor.affiliation
The University of Texas at Arlington, United States of America (the)
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dc.contributor.affiliation
Technical University of Darmstadt, Germany
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dc.relation.isbn
979-8-3315-4393-8
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dc.relation.doi
10.1109/IROS60139.2025
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dc.relation.issn
2153-0858
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dc.description.startpage
11291
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dc.description.endpage
11297
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dc.type.category
Full-Paper Contribution
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dc.relation.eissn
2153-0866
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tuw.booktitle
2025 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)