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Zero-Shot Generalization from Motion Demonstrations to New Tasks

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Learning motion policies from expert demonstrations is an essential paradigm in modern robotics. While end-to-end models aim for broad generalization, they require large datasets and computationally heavy inference. Conversely, learning dynamical systems (DS) provides fast, reactive, and provably stable control from very few demonstrations. However, existing DS learning methods typically model isolated tasks and struggle to reuse demonstrations for novel behaviors. In this work, we formalize the problem of combining isolated demonstrations within a shared workspace to enable generalization to unseen tasks. The Gaussian Graph is introduced, which reinterprets spatial components of learned motion primitives as discrete vertices with connections to one another. This formulation allows us to bridge continuous control with discrete graph search. We propose two frameworks leveraging this graph: Stitching, for constructing time-invariant DSs, and Chaining, giving a sequence-based DS for complex motions while retaining convergence guarantees. Simulations and real-robot experiments show that these methods successfully generalize to new tasks where baseline methods fail.

Kilian Freitag, Alvin Combrink, Nadia Figueroa• 2026

Related benchmarks

TaskDatasetResultRank
Trajectory Synthesis2D Small
Success Rate99.2
8
Trajectory Synthesis2D Large
Success Rate97.4
8
Trajectory Synthesis3D PC-GMM
Success Rate100
8
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