Paolillo, AntonioLembono, Teguh SantosoCalinon, Sylvain2020-03-182020-03-182020-03-18202010.1109/ICRA40945.2020.9197216https://infoscience.epfl.ch/handle/20.500.14299/167406This paper addresses the problem of efficiently achieving visual predictive control tasks. To this end, a memory of motion, containing a set of trajectories built off-line, is used for leveraging precomputation and dealing with difficult visual tasks. Standard regression techniques, such as k-nearest neighbors and Gaussian process regression, are used to query the memory and provide on-line a warm-start and a way point to the control optimization process. The proposed technique allows the control scheme to achieve high performance %difficult tasks and, at the same time, keep the computational time limited. Simulation and experimental results, carried out with a 7-axis manipulator, show the effectiveness of the approach.Visual Predictive ControlA memory of motion for visual predictive control taskstext::conference output::conference proceedings::conference paper