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Reactive Motion Generation via Phase-varying Neural Potential Functions

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Dynamical systems (DS) methods for Learning-from-Demonstration (LfD) provide stable, continuous policies from few demonstrations. First-order dynamical systems (DS) are effective for many point-to-point and periodic tasks, as long as a unique velocity is defined for each state. For tasks with intersections (e.g., drawing an "8"), extensions such as second-order dynamics or phase variables are often used. However, by incorporating velocity, second-order models become sensitive to disturbances near intersections, as velocity is used to disambiguate motion direction. Moreover, this disambiguation may fail when nearly identical position-velocity pairs correspond to different onward motions. In contrast, phase-based methods rely on open-loop time or phase variables, which limit their ability to recover after perturbations. We introduce Phase-varying Neural Potential Functions (PNPF), an LfD framework that conditions a potential function on a phase variable which is estimated directly from state progression, rather than on open-loop temporal inputs. This phase variable allows the system to handle state revisits, while the learned potential function generates local vector fields for reactive and stable control. PNPF generalizes effectively across point-to-point, periodic, and full 6D motion tasks, outperforms existing baselines on trajectories with intersections, and demonstrates robust performance in real-time robotic manipulation under external disturbances.

Ahmet Tekden, Dimitrios Kanoulas, Aude Billard, Yasemin Bekiroglu• 2026

Related benchmarks

TaskDatasetResultRank
Motion ReproductionCHAR
DTWD2.96
4
Motion ReproductionLASA
DTWD1.81
3
Motion ReproductionLAIR
DTWD4.82
2
Motion ReproductionRoboTasks
DTWD Distance (Position)2.19
2
Periodic Motion ReproductionChar-Periodic
DTWD7.77
2
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