@article{6636,
  title = {Combining active learning and reactive control for robot grasping},
  journal = {Robotics and Autonomous Systems},
  abstract = {Grasping an object is a task that inherently needs to be treated in a hybrid fashion. The system must decide both where and how to grasp the object. While selecting where to grasp requires learning about the object as a whole, the execution only needs to reactively adapt to the context close to the grasps location. We propose a hierarchical controller that reflects the structure of these two sub-problems, and attempts to learn solutions that work for both. A hybrid architecture is employed by the controller to make use of various machine learning methods that can cope with the large amount of uncertainty inherent to the task. The controllers upper level selects where to grasp the object using a reinforcement learner, while the lower level comprises an imitation learner and a vision-based reactive controller to determine appropriate grasping motions. The resulting system is able to quickly learn good grasps of a novel object in an unstructured environment, by executing smooth reaching motions and preshapin
  g the hand depending on the objects geometry. The system was evaluated both in simulation and on a real robot.},
  volume = {58},
  number = {9},
  pages = {1105-1116},
  organization = {Max-Planck-Gesellschaft},
  school = {Biologische Kybernetik},
  month = sep,
  year = {2010},
  author = {Kroemer, O. and Detry, R. and Piater, J. and Peters, J.},
  doi = {10.1016/j.robot.2010.06.001},
  month_numeric = {9}
}
