IEEE Access (Jan 2021)

Beyond the Baseline: 3D Reconstruction of Tiny Objects With <underline>Si</underline>ngle Camera <underline>Ste</underline>reo <underline>R</underline>obot

  • Daniele De Gregorio,
  • Matteo Poggi,
  • Pierluigi Zama Ramirez,
  • Gianluca Palli,
  • Stefano Mattoccia,
  • Luigi Di Stefano

DOI
https://doi.org/10.1109/ACCESS.2021.3108626
Journal volume & issue
Vol. 9
pp. 119755 – 119765

Abstract

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Self-aware robots rely on depth sensing to interact with the surrounding environment, e.g. to pursue object grasping. Yet, dealing with tiny items, often occurring in industrial robotics scenarios, may represent a challenge due to lack of sensors yielding sufficiently accurate depth measurements. Existing active sensors fail at measuring details of small objects (< 1cm) because of limitations in the working range, e.g. usually beyond 50 cm away, while off-the-shelf stereo cameras are not suited to close-range acquisitions due to the need for extremely short baselines. Therefore, we propose a framework designed for accurate depth sensing and particularly amenable to reconstruction of miniature objects. By leveraging on a single camera mounted in eye-on-hand configuration and the high repeatability of a robot, we acquire multiple images and process them through a stereo algorithm revised to fully exploit multiple vantage points. Using a novel dataset addressing performance evaluation in industrial applications, our Single camera Stereo Robot (SiSteR) delivers high accuracy even when dealing with miniature objects. We will provide a public dataset and an open-source implementation of our proposal to foster further development in this field.

Keywords