Online trajectory optimization techniques generally depend on heuristic-based contact planners in order to have low computation times and achieve high replanning frequencies. In this work, we propose ContactNet, a fast acyclic contact planner based on a multi-output regression neural network. ContactNet ranks discretized stepping regions, allowing to quickly choose the best feasible solution, even in complex environments. The low computation time, in the order of 1 ms, makes possible the execution of the contact planner concurrently with a trajectory optimizer in a Model Predictive Control (MPC) fashion. We demonstrate the effectiveness of the approach in simulation in different complex scenarios with the quadruped robot Solo12
In recent years, the capabilities of legged locomotion controllers have been significantly advanced ...
Humanoids' abilities to navigate uneven terrain make them well-suited for disaster response efforts,...
International audienceDespite the great progress in quadrupedal robotics during the last decade, sel...
Legged robot locomotion requires the planning of stable reference trajectories, especially while tra...
For legged robots, generating dynamic and versatile motions is essential for interacting with comple...
International audienceWe present a framework capable of producing contact plans describing complex m...
Robots hold the promise of becoming useful helpers for many dangerous, laborious, or unpleasant task...
We describe an optimization-based framework to perform complex locomotion skills for robots with leg...
International audienceMotion planning in multi-contact scenarios has recently gathered interest with...
International audienceMultiped locomotion in cluttered environments is addressed as the problem of p...
International audienceThe combinatorics inherent to the issue of planning legged locomotion can be a...
Legged machines have the potential to traverse terrain that wheeled robots cannot. These capabilitie...
International audienceThis paper presents a generic and efficient approach to generate dynamically c...
In recent years, the capabilities of legged locomotion controllers have been significantly advanced ...
Humanoids' abilities to navigate uneven terrain make them well-suited for disaster response efforts,...
International audienceDespite the great progress in quadrupedal robotics during the last decade, sel...
Legged robot locomotion requires the planning of stable reference trajectories, especially while tra...
For legged robots, generating dynamic and versatile motions is essential for interacting with comple...
International audienceWe present a framework capable of producing contact plans describing complex m...
Robots hold the promise of becoming useful helpers for many dangerous, laborious, or unpleasant task...
We describe an optimization-based framework to perform complex locomotion skills for robots with leg...
International audienceMotion planning in multi-contact scenarios has recently gathered interest with...
International audienceMultiped locomotion in cluttered environments is addressed as the problem of p...
International audienceThe combinatorics inherent to the issue of planning legged locomotion can be a...
Legged machines have the potential to traverse terrain that wheeled robots cannot. These capabilitie...
International audienceThis paper presents a generic and efficient approach to generate dynamically c...
In recent years, the capabilities of legged locomotion controllers have been significantly advanced ...
Humanoids' abilities to navigate uneven terrain make them well-suited for disaster response efforts,...
International audienceDespite the great progress in quadrupedal robotics during the last decade, sel...