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Two-dimensional pose estimation of industrial robotic arms in highly dynamic collaborative environments

  • In modern collaborative production environments where industrial robots and humans are supposed to work hand in hand, it is mandatory to observe the robot’s workspace at all times. Such observation is even more crucial when the robot’s main position is also dynamic e.g. because the system is mounted on a movable platform. As current solutions like physically secured areas in which a robot can perform actions potentially dangerous for humans, become unfeasible in such scenarios, novel, more dynamic, and situation aware safety solutions need to be developed and deployed. This thesis mainly contributes to the bigger picture of such a collaborative scenario by presenting a data-driven convolutional neural network-based approach to estimate the two-dimensional kinematic-chain configuration of industrial robot-arms within raw camera images. This thesis also provides the information needed to generate and organize the mandatory data basis and presents frameworks that were used to realize all involved subsystems. The robot-arm’s extracted kinematic-chain can also be used to estimate the extrinsic camera parameters relative to the robot’s three-dimensional origin. Further a tracking system, based on a two-dimensional kinematic chain descriptor is presented to allow for an accumulation of a proper movement history which enables the prediction of future target positions within the given image plane. The combination of the extracted robot’s pose with a simultaneous human pose estimation system delivers a consistent data flow that can be used in higher-level applications. This thesis also provides a detailed evaluation of all involved subsystems and provides a broad overview of their particular performance, based on novel generated, semi automatically annotated, real datasets.

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Metadaten
Author of HS ReutlingenGulde, Thomas
URN:urn:nbn:de:bsz:rt2-opus4-45231
DOI:https://doi.org/10.15496/publikation-84948
Publisher:Universität Tübingen
Place of publication:Tübingen
Referee:Cristóbal CurioORCiD, Andreas Schilling
Referee of HS Reutlingen:Curio, Cristóbal
Document Type:Doctoral Thesis
Language:English
Publication year:2023
Date of final exam:2023/04/04
Tag:Maschinelles Sehen; Posendetection; Robotik; deep learning; neuronales Netz
Page Number:166
Dissertation note:Dissertation, Universität Tübingen, 2023
DDC classes:004 Informatik
Open access?:Ja
Licence (German):License Logo  Open Access