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Open-Vocabulary Part-Based Grasping (2406.05951v1)

Published 10 Jun 2024 in cs.RO

Abstract: Many robotic applications require to grasp objects not arbitrarily but at a very specific object part. This is especially important for manipulation tasks beyond simple pick-and-place scenarios or in robot-human interactions, such as object handovers. We propose AnyPart, a practical system that combines open-vocabulary object detection, open-vocabulary part segmentation and 6DOF grasp pose prediction to infer a grasp pose on a specific part of an object in 800 milliseconds. We contribute two new datasets for the task of open-vocabulary part-based grasping, a hand-segmented dataset containing 1014 object-part segmentations, and a dataset of real-world scenarios gathered during our robot trials for individual objects and table-clearing tasks. We evaluate AnyPart on a mobile manipulator robot using a set of 28 common household objects over 360 grasping trials. AnyPart is capable of producing successful grasps 69.52 %, when ignoring robot-based grasp failures, AnyPart predicts a grasp location on the correct part 88.57 % of the time.

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Authors (6)
  1. Tjeard van Oort (1 paper)
  2. Dimity Miller (17 papers)
  3. Nicolas Marticorena (2 papers)
  4. Jesse Haviland (15 papers)
  5. Niko Suenderhauf (17 papers)
  6. Will N. Browne (8 papers)
Citations (1)

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