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Data-Efficient Model Learning and Prediction for Contact-Rich Manipulation Tasks

Shahbaz Abdul Khader, Hang Yin, Pietro Falco, Danica Kragic

2020IEEE Robotics and Automation Letters15 citationsDOIOpen Access PDF

Abstract

In this letter, we investigate learning forward dynamics models and multi-step prediction of state variables (long-term prediction) for contact-rich manipulation. The problems are formulated in the context of model-based reinforcement learning (MBRL). We focus on two aspects-discontinuous dynamics and data-efficiency-both of which are important in the identified scope and pose significant challenges to State-of-the-Art methods. We contribute to closing this gap by proposing a method that explicitly adopts a specific hybrid structure for the model while leveraging the uncertainty representation and data-efficiency of Gaussian process. Our experiments on an illustrative moving block task and a 7-DOF robot demonstrate a clear advantage when compared to popular baselines in low data regimes.

Topics & Concepts

Computer scienceArtificial intelligenceReinforcement learningTask (project management)Machine learningFocus (optics)Context (archaeology)Representation (politics)Closing (real estate)Dynamics (music)Block (permutation group theory)Scope (computer science)State (computer science)Gaussian processTraining setKey (lock)Task analysisRobotGaussianFeature learningSupervised learningVariation (astronomy)Stability (learning theory)Robot Manipulation and LearningReinforcement Learning in RoboticsMotor Control and Adaptation
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