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2021 | OriginalPaper | Chapter

Using Deep Neural Networks to Separate Entangled Workpieces in Random Bin Picking

Authors : Marius Moosmann, Felix Spenrath, Manuel Mönnig, Muhammad Usman Khalid, Marvin Jaumann, Johannes Rosport, Richard Bormann

Published in: Advances in Automotive Production Technology – Theory and Application

Publisher: Springer Berlin Heidelberg

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Abstract

Entanglements can cause robots to pick multiple parts within random bin picking applications. Previous approaches cope with this problem by shaking the gripped workpiece above the bin. However, these methods increase the cycle time and may decrease the robustness of the application. Therefore we propose a new method to separate entangled workpiece situations by using deep supervised learning. To generate annotated training data for a convolutional neural network we set up a simulation scene. In this scene, bins are filled with different amounts of sorted workpieces in several entangled situations. Each workpiece is then moved into different directions to path poses which are evenly distributed along the surface of a hemisphere. The emerging dataset consists of cropped depth images of entangled workpiece situations and several path poses. A serial connection of convolutional neural networks is trained on this dataset and proposes a sequence of poses yielding the general departure path. Finally, the performance of this method is validated on simulated data. To the best of our knowledge, our proposed method is the first systematic approach to find the best extraction strategy to separate entangled workpieces in a pile while decreasing the effective cycle time for gripping entangled workpieces and increasing the robustness significantly.

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Metadata
Title
Using Deep Neural Networks to Separate Entangled Workpieces in Random Bin Picking
Authors
Marius Moosmann
Felix Spenrath
Manuel Mönnig
Muhammad Usman Khalid
Marvin Jaumann
Johannes Rosport
Richard Bormann
Copyright Year
2021
Publisher
Springer Berlin Heidelberg
DOI
https://doi.org/10.1007/978-3-662-62962-8_28

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