Paladyn (Jun 2012)

VisGraB: A Benchmark for Vision-Based Grasping

  • Kootstra Gert,
  • Popović Mila,
  • Jørgensen Jimmy Alison,
  • Kragic Danica,
  • Petersen Henrik Gordon,
  • Krüger Norbert

DOI
https://doi.org/10.2478/s13230-012-0020-5
Journal volume & issue
Vol. 3, no. 2
pp. 54 – 62

Abstract

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We present a database and a software tool, VisGraB, for benchmarking of methods for vision-based grasping of unknown objects with no prior object knowledge. The benchmark is a combined real-world and simulated experimental setup. Stereo images of real scenes containing several objects in different configurations are included in the database. The user needs to provide a method for grasp generation based on the real visual input. The grasps are then planned, executed, and evaluated by the provided grasp simulator where several grasp-quality measures are used for evaluation. This setup has the advantage that a large number of grasps can be executed and evaluated while dealing with dynamics and the noise and uncertainty present in the real world images. VisGraB enables a fair comparison among different grasping methods. The user furthermore does not need to deal with robot hardware, focusing on the vision methods instead. As a baseline, benchmark results of our grasp strategy are included.

Keywords