Efficient Intrinsically Motivated Robotic Grasping with Learning-Adaptive Imagination in Latent Space
Proceedings of the Ninth Joint IEEE International Conference on Development and Learning and on Epigenetic Robotics (ICDL-EpiRob),
pages 240--246,
doi: 10.1109/DEVLRN.2019.8850723
- Aug 2019
Combining model-based and model-free deep reinforcement learning has shown great promise for improving sample efficiency on complex control tasks while still retaining high
performance. Incorporating imagination is a recent effort in this
direction inspired by human mental simulation of motor behavior. We propose a learning-adaptive imagination approach
which, unlike previous approaches, takes into account the reliability of the learned dynamics model used for imagining the future. Our approach learns an ensemble of disjoint local dynamics
models in latent space and derives an intrinsic reward based on
learning progress, motivating the controller to take actions leading to data that improves the models. The learned models are
used to generate imagined experiences, augmenting the training
set of real experiences. We evaluate our approach on learning
vision-based robotic grasping and show that it significantly improves sample efficiency and achieves near-optimal performance
in a sparse reward environment.
@InProceedings{HWKW19b, author = {Hafez, Burhan and Weber, Cornelius and Kerzel, Matthias and Wermter, Stefan}, title = {Efficient Intrinsically Motivated Robotic Grasping with Learning-Adaptive Imagination in Latent Space}, booktitle = {Proceedings of the Ninth Joint IEEE International Conference on Development and Learning and on Epigenetic Robotics (ICDL-EpiRob)}, editors = {}, number = {}, volume = {}, pages = {240--246}, year = {2019}, month = {Aug}, publisher = {IEEE}, doi = {10.1109/DEVLRN.2019.8850723}, }