Precise Object Placement with Pose Distance Estimations for Different Objects and Grippers (2110.00992v1)
Abstract: This paper introduces a novel approach for the grasping and precise placement of various known rigid objects using multiple grippers within highly cluttered scenes. Using a single depth image of the scene, our method estimates multiple 6D object poses together with an object class, a pose distance for object pose estimation, and a pose distance from a target pose for object placement for each automatically obtained grasp pose with a single forward pass of a neural network. By incorporating model knowledge into the system, our approach has higher success rates for grasping than state-of-the-art model-free approaches. Furthermore, our method chooses grasps that result in significantly more precise object placements than prior model-based work.
- Kilian Kleeberger (7 papers)
- Jonathan Schnitzler (1 paper)
- Muhammad Usman Khalid (4 papers)
- Richard Bormann (5 papers)
- Werner Kraus (4 papers)
- Marco F. Huber (47 papers)