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Deep unsupervised state representation learning with robotic priors: A robustness analysis

  • Timothee Lesort
  • , Mathieu Seurin
  • , Xinrui Li
  • , Natalia DIaz-Rodriguez
  • , David Filliat
  • ENSTA ParisTech
  • Université de Lille

Résultats de recherche: Le chapitre dans un livre, un rapport, une anthologie ou une collectionContribution à une conférenceRevue par des pairs

Résumé

Our understanding of the world depends highly on our capacity to produce intuitive and simplified representations which can be easily used to solve problems. We reproduce this simplification process using a neural network to build a low dimensional state representation of the world from images acquired by a robot. As in Jonschkowski et al. 2015, we learn in an unsupervised way using prior knowledge about the world as loss functions called robotic priors and extend this approach to high dimension richer images to learn a 3D representation of the hand position of a robot from RGB images. We propose a quantitative evaluation metric of the learned representation that uses nearest neighbors in the state space and allows to assess its quality and show both the potential and limitations of robotic priors in realistic environments. We augment image size, add distractors and domain randomization, all crucial components to achieve transfer learning to real robots. Finally, we also contribute a new prior to improve the robustness of the representation. The applications of such low dimensional state representation range from easing reinforcement learning (RL) and knowledge transfer across tasks, to facilitating learning from raw data with more efficient and compact high level representations. The results show that the robotic prior approach is able to extract high level representation as the 3D position of an arm and organize it into a compact and coherent space of states in a challenging dataset.

langue originaleAnglais
titre2019 International Joint Conference on Neural Networks, IJCNN 2019
EditeurInstitute of Electrical and Electronics Engineers Inc.
ISBN (Electronique)9781728119854
Les DOIs
étatPublié - 1 juil. 2019
Modification externeOui
Evénement2019 International Joint Conference on Neural Networks, IJCNN 2019 - Budapest, Hongrie
Durée: 14 juil. 201919 juil. 2019

Série de publications

NomProceedings of the International Joint Conference on Neural Networks
Volume2019-July

Une conférence

Une conférence2019 International Joint Conference on Neural Networks, IJCNN 2019
Pays/TerritoireHongrie
La villeBudapest
période14/07/1919/07/19

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