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Object-Oriented Dynamics Learning through Multi-Level Abstraction

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arxiv 1904.07482 v4 pith:KMTMRSCY submitted 2019-04-16 cs.LG cs.AIcs.CVstat.ML

Object-Oriented Dynamics Learning through Multi-Level Abstraction

classification cs.LG cs.AIcs.CVstat.ML
keywords learningdynamicsmaopenvironmentsmodelsabstractionapproachesefficient
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Object-based approaches for learning action-conditioned dynamics has demonstrated promise for generalization and interpretability. However, existing approaches suffer from structural limitations and optimization difficulties for common environments with multiple dynamic objects. In this paper, we present a novel self-supervised learning framework, called Multi-level Abstraction Object-oriented Predictor (MAOP), which employs a three-level learning architecture that enables efficient object-based dynamics learning from raw visual observations. We also design a spatial-temporal relational reasoning mechanism for MAOP to support instance-level dynamics learning and handle partial observability. Our results show that MAOP significantly outperforms previous methods in terms of sample efficiency and generalization over novel environments for learning environment models. We also demonstrate that learned dynamics models enable efficient planning in unseen environments, comparable to true environment models. In addition, MAOP learns semantically and visually interpretable disentangled representations.

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