posted by organizer: liarokapis || 1506 views || tracked by 8 users: [display]

CoRL 2022 : Conference on Robot Learning


When Dec 14, 2022 - Dec 18, 2022
Where Auckland, New Zealand
Submission Deadline Jun 15, 2022
Notification Due Sep 10, 2022
Final Version Due Oct 15, 2022
Categories    robotics   robot learning

Call For Papers

CoRL publishes significant original research at the intersection of robotics and machine learning. CoRL is a selective, single-track international conference addressing theory and practice of machine learning for robots (and automation: where robot prototypes are scaled for cost effectiveness, efficiency, and reliability in practice). CoRL welcomes papers in areas such as:

- Use and development of reinforcement learning for control of physical robots
- Imitation learning for robotics, e.g. by behavioral cloning or inverse reinforcement learning
- Model-free learning for robot decision-making
- Bio-inspired robot learning and control
- Probabilistic learning and representation of uncertainty in robotics
- Model learning, i.e., learning for robot structure and system identification
- Robot state estimation, localization and mapping
- Learning for Robot Task and Motion Planning
- Learning for multimodal robot perception, sensor fusion, and robot vision
- Learning for human-robot interaction and robot instruction by natural language, gestures as well as alternative devices
- Applications of robot learning in robot manipulation, navigation, driving, flight, and other areas of robotics
- Robot systems, hardware, and sensors for learning and data-driven approaches

Submissions should focus on a core robotics problem and demonstrate the relevance of proposed models, algorithms, data sets, and benchmarks to robotics. Authors are encouraged to report real-robot experiments or provide convincing evidence that simulation experiments are transferable to real robots. Submissions without a robotics focus will be returned without review.

All Submissions should also include a limitations section, explicitly describing limiting assumptions, failure modes, and other limitations of the results and experiments and how these might be addressed in the future.

Authors are also encouraged to submit code and data as supplementary materials.

Related Resources

EI-CFAIS 2022   2022 International Conference on Frontiers of Artificial Intelligence and Statistics (CFAIS 2022)
RiTA 2022   the 10th International Conference on Robot Intelligence Technology and Applications
ICBDB 2022   2022 4th International Conference on Big Data and Blockchain(ICBDB 2022)
RL-CONFORM 2022   2nd RL-CONFORM Workshop: Reinforcement Learning meets HRI, Control, and Formal Methods
IOP, EI, Scopus-PRECE 2022   2022 International Conference on Power, Renewable Energy and Control Engineering (PRECE 2022)-EI Compendex
MLDM 2023   18th International Conference on Machine Learning and Data Mining
SCOM 2022   10th International Conference on Soft Computing
CFDSP 2023   2023 International Conference on Frontiers of Digital Signal Processing (CFDSP 2023)
IJCNN 2023   International Joint Conference on Neural Networks
WSPML 2022   2022 4rd International Workshop on Signal Processing and Machine Learning (WSPML 2022)