7 research outputs found

    Task planning for table clearing of cluttered objects

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    Manipulation planning is a field of study with increasing interest, it combines manipulation skills and an artificial intelligence system that is able to find the optimal sequence of actions in order to solve manipulation problems. It is a complex problem since involves a mixture of symbolic planning and geometric planning. To complete the task the sequence of actions has to satisfy a set of geometrical restrictions. In this thesis we present a planning system for clearing a table with cluttered objects, which tackles geometrical restrictions within symbolic planning with a backtracking approach. The main contribution of this thesis is a planning system able to solve a wider variety of scenarios for clearing a table with cluttered objects. Grasping actions alone are not enough, and pushing actions may be needed to move an object to a pose in which it can be grasped. The planning system presented here can reason about sequences of pushing and grasping actions that allow a robot to grasp an object that was not initially graspable. This work shows that some geometric problems can be efficiently handled by reasoning at an abstract level through symbolic predicates when such predicates are chosen correctly. The advantage of this system is a reduction in execution time and it is also easy to implement. This master thesis has been developed in the Institut de Robòtica i Informàtica Industrial (IRI) in the Perception and Manipulation laboratory with the supervision of David Martínez Martínez as director and Guillem Alenyà Ribas as co-director

    Planning clearing actions in cluttered scenes by phasing in geometrical constraints

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    Manipulation planning of cluttered objects involves a mixture of symbolic and geometric constraints which makes such planning very time consuming and often unsuitable for real applications. We propose to divide the geometric restrictions in two groups. The ones in the first group are used to generate a set of symbolic states used for planning. The evaluation of the ones in the second group is delayed after planning, and only relevant ones are evaluated when necessary. We demonstrate our proposal in a simple but effective implementation using pushing and grasping actions.Peer ReviewedPostprint (author's final draft

    Grasping novel objects

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    The work explained in this technical report is about evaluating some recent algorithms to grasp unforeseen objects for table clearance tasks. A tabletop object segmentation algorithm is proposed, and two recently published methods to generate grasps are discussed. The report presents practical considerations on how to use the segmentation algorithm and how to perform the tests with the evaluated algorithms for the generation of grasping poses. Finally, the results of both approaches and their comparison are discussed.N

    Depth-sensored autonomous system for table clearing tasks

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    Manipulation planning is a field of study with increasing interest, it combines manipulation skills and an artificial intelligence system that is able to find the optimal sequence of actions in order to solve manipulation problems. In this thesis we present a planning system for clearing a table with cluttered objects, which tackles geometrical restrictions within symbolic planning with a backtracking approac

    Task planning for table clearing of cluttered objects

    No full text
    Manipulation planning is a field of study with increasing interest, it combines manipulation skills and an artificial intelligence system that is able to find the optimal sequence of actions in order to solve manipulation problems. It is a complex problem since involves a mixture of symbolic planning and geometric planning. To complete the task the sequence of actions has to satisfy a set of geometrical restrictions. In this thesis we present a planning system for clearing a table with cluttered objects, which tackles geometrical restrictions within symbolic planning with a backtracking approach. The main contribution of this thesis is a planning system able to solve a wider variety of scenarios for clearing a table with cluttered objects. Grasping actions alone are not enough, and pushing actions may be needed to move an object to a pose in which it can be grasped. The planning system presented here can reason about sequences of pushing and grasping actions that allow a robot to grasp an object that was not initially graspable. This work shows that some geometric problems can be efficiently handled by reasoning at an abstract level through symbolic predicates when such predicates are chosen correctly. The advantage of this system is a reduction in execution time and it is also easy to implement. This master thesis has been developed in the Institut de Robòtica i Informàtica Industrial (IRI) in the Perception and Manipulation laboratory with the supervision of David Martínez Martínez as director and Guillem Alenyà Ribas as co-director

    Planning clearing actions in cluttered scenes by phasing in geometrical constraints

    No full text
    Manipulation planning of cluttered objects involves a mixture of symbolic and geometric constraints which makes such planning very time consuming and often unsuitable for real applications. We propose to divide the geometric restrictions in two groups. The ones in the first group are used to generate a set of symbolic states used for planning. The evaluation of the ones in the second group is delayed after planning, and only relevant ones are evaluated when necessary. We demonstrate our proposal in a simple but effective implementation using pushing and grasping actions.Peer Reviewe
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