Humans, in comparison to robots, are remarkably adept at reaching for objects in cluttered environments. The best existing robot planners are based on random sampling of configuration space- which becomes excessively high-dimensional with large number of objects. Consequently, most planners often fail to efficiently find object manipulation plans in such environments. We addressed this problem by identifying high-level manipulation plans in humans, and transferring these skills to robot planners. We used virtual reality to capture human participants reaching for a target object on a tabletop cluttered with obstacles. From this, we devised a qualitative representation of the task space to abstract the decision making, irrespective of the num...
Physics-based manipulation in clutter involves complex interaction between multiple objects. In this...
Robot learning provides a number of ways to teach robots simple skills, such as grasping. However, t...
International audienceThis paper addresses the motion planning problem while considering Human-Robot...
We propose a human-operator guided planning approach to pushing-based manipulation in clutter. Most ...
The objective of this project is learning high-level manipulation planning skills from humans and tr...
This thesis presents motion planning and control algorithms to tackle the problem of Reaching Throug...
We present a predictive system for non-prehensile, physics-based motion planning in clutter with a h...
Manipulation in clutter requires solving complex sequential decision making problems in an environme...
2014-12-08Robotic household assistants of the future will need to understand their environment in re...
This thesis presents a series of planners and algorithms for manipulation in cluttered human environ...
This thesis presents a series of planners and learning algorithms for real-world manipulation in clu...
Planning motion is an essential component for any autonomous robotic system. An intelligent agent mu...
Adaptation to unorganized, congested and uncertain environment is a desirable capability but challen...
As we work to move robots out of factories and into human environments, we must empower robots to in...
This paper describes a global interactive framework enabling an automatic path-planner and a user to...
Physics-based manipulation in clutter involves complex interaction between multiple objects. In this...
Robot learning provides a number of ways to teach robots simple skills, such as grasping. However, t...
International audienceThis paper addresses the motion planning problem while considering Human-Robot...
We propose a human-operator guided planning approach to pushing-based manipulation in clutter. Most ...
The objective of this project is learning high-level manipulation planning skills from humans and tr...
This thesis presents motion planning and control algorithms to tackle the problem of Reaching Throug...
We present a predictive system for non-prehensile, physics-based motion planning in clutter with a h...
Manipulation in clutter requires solving complex sequential decision making problems in an environme...
2014-12-08Robotic household assistants of the future will need to understand their environment in re...
This thesis presents a series of planners and algorithms for manipulation in cluttered human environ...
This thesis presents a series of planners and learning algorithms for real-world manipulation in clu...
Planning motion is an essential component for any autonomous robotic system. An intelligent agent mu...
Adaptation to unorganized, congested and uncertain environment is a desirable capability but challen...
As we work to move robots out of factories and into human environments, we must empower robots to in...
This paper describes a global interactive framework enabling an automatic path-planner and a user to...
Physics-based manipulation in clutter involves complex interaction between multiple objects. In this...
Robot learning provides a number of ways to teach robots simple skills, such as grasping. However, t...
International audienceThis paper addresses the motion planning problem while considering Human-Robot...