(MARGOT) Monocular Camera-Based Robot Grasping Strategy for Metallic Objects
Author:
Veiga Almagro Carlos12ORCID, Muñoz Orrego Renato Andrés13ORCID, García González Álvaro1ORCID, Matheson Eloise1ORCID, Marín Prades Raúl2ORCID, Di Castro Mario1ORCID, Ferre Pérez Manuel3ORCID
Affiliation:
1. BE-CEM Beams Department, Controls, Electronics and Mechatronics Group, European Organization for Nuclear Research (CERN), 1217 Geneva, Switzerland 2. Interactive Robotic Systems Lab, Jaume I University of Castellón, 12006 Castellón de la Plana, Spain 3. Centro de Automatica y Robotica (CAR) UPM-CSIC, Universidad Politecnica de Madrid, 28006 Madrid, Spain
Abstract
Robotic handling of objects is not always a trivial assignment, even in teleoperation where, in most cases, this might lead to stressful labor for operators. To reduce the task difficulty, supervised motions could be performed in safe scenarios to reduce the workload in these non-critical steps by using machine learning and computer vision techniques. This paper describes a novel grasping strategy based on a groundbreaking geometrical analysis which extracts diametrically opposite points taking into account surface smoothing (even those target objects that might conform highly complex shapes) to guarantee the uniformity of the grasping. It uses a monocular camera, as we are often facing space restrictions that generate the need to use laparoscopic cameras integrated in the tools, to recognize and isolate targets from the background, estimating their spatial coordinates and providing the best possible stable grasping points for both feature and featureless objects. It copes with reflections and shadows produced by light sources (which require extra effort to extract their geometrical properties) in unstructured facilities such as nuclear power plants or particle accelerators on scientific equipment. Based on the experimental results, utilizing a specialized dataset improved the detection of metallic objects in low-contrast environments, resulting in the successful application of the algorithm with error rates in the scale of millimeters in the majority of repeatability and accuracy tests.
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
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