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Towards Generalisable Imitation Learning Through Conditioned Transition Estimation and Online Behaviour Alignment

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State-of-the-art imitation learning from observation methods (ILfO) have recently made significant progress, but they still have some limitations: they need action-based supervised optimisation, assume that states have a single optimal action, and tend to apply teacher actions without full consideration of the actual environment state. While the truth may be out there in observed trajectories, existing methods struggle to extract it without supervision. In this work, we propose Unsupervised Imitation Learning from Observation (UfO) that addresses all of these limitations. UfO learns a policy through a two-stage process, in which the agent first obtains an approximation of the teacher's true actions in the observed state transitions, and then refines the learned policy further by adjusting agent trajectories to closely align them with the teacher's. Experiments we conducted in five widely used environments show that UfO not only outperforms the teacher and all other ILfO methods but also displays the smallest standard deviation. This reduction in standard deviation indicates better generalisation in unseen scenarios.

Nathan Gavenski, Matteo Leonetti, Odinaldo Rodrigues• 2026

Related benchmarks

TaskDatasetResultRank
Imitation Learning from ObservationAnt v4
AER5.90e+3
8
Imitation Learning from ObservationInvertedPendulum v4
AER1.00e+3
8
Imitation Learning from ObservationHopper v4
AER3.57e+3
8
Imitation Learning from ObservationSwimmer v4
AER361.2
8
Imitation Learning from ObservationHalfCheetah v4
AER9.96e+3
8
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