Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

SafeFlowMPC: Predictive and Safe Trajectory Planning for Robot Manipulators with Learning-based Policies

About

The emerging integration of robots into everyday life brings several major challenges. Compared to classical industrial applications, more flexibility is needed in combination with real-time reactivity. Learning-based methods can train powerful policies based on demonstrated trajectories, such that the robot generalizes a task to similar situations. However, these black-box models lack interpretability and rigorous safety guarantees. Optimization-based methods provide these guarantees but lack the required flexibility and generalization capabilities. This work proposes SafeFlowMPC, a combination of flow matching and online optimization to combine the strengths of learning and optimization. This method guarantees safety at all times and is designed to meet the demands of real-time execution by using a suboptimal model-predictive control formulation. SafeFlowMPC achieves strong performance in three real-world experiments on a KUKA 7-DoF manipulator, namely two grasping experiment and a dynamic human-robot object handover experiment. A video of the experiments is available at http://www.acin.tuwien.ac.at/42d6. The code is available at https://github.com/TU-Wien-ACIN-CDS/SafeFlowMPC.

Thies Oelerich, Gerald Ebmer, Christian Hartl-Nesic, Andreas Kugi• 2026

Related benchmarks

TaskDatasetResultRank
Trajectory PlanningExperiment Simulation 1
Trajectory Time (s)5.12
7
Trajectory PlanningOnline replanning for object grasps Experiment 2
Success Rate82
5
Human-robot object handoverHuman-human handover dataset (test)
Terminal Constraint Violations0.00e+0
3
Showing 3 of 3 rows

Other info

Follow for update