Published November 26, 2019 | Version v1
Conference paper Open

DCNN-Based Screw Detection for Automated Disassembly Processes

  • 1. Georg-August University of Goettingen

Description

Automation of disassembly processes in electronic waste recycling is progressing but hindered by the lack of automated procedures for screw detection and removal. Here we specifically address the detection problem and implement a universal, generalizable, and extendable screw detector which can be deployed in automated disassembly lines. We selected the best performing state-of-the-art classifiers and compared their performance to that of our architecture, which combines a Hough transform with a novel integrated model of two deep convolutional neural networks for screw detection. We show that our method outperforms currently existing methods while maintaining the high speed of computation. Data set and code of this study are made public.

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Additional details

Related works

Is source of
Conference paper: 10.1109/SITIS.2019.00040 (DOI)
Conference paper: 978-1-72815-686-6 (ISBN)

Funding

European Commission
IMAGINE - Robots Understanding Their Actions by Imagining Their Effects 731761