A Two-Stage Screw Detection Framework for Automatic Disassembly Using a Reflection Feature Regression Model

Quan Liu, Wupeng Deng, Duc Truong Pham, Jiwei Hu*, Yongjing Wang, Zude Zhou

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

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Abstract

For remanufacturing to be more economically attractive, there is a need to develop automatic disassembly and automated visual detection methods. Screw removal is a common step in end-of-life product disassembly for remanufacturing. This paper presents a two-stage detection framework for structurally damaged screws and a linear regression model of reflection features that allows the detection framework to be conducted under uneven illumination conditions. The first stage employs reflection features to extract screws together with the reflection feature regression model. The second stage uses texture features to filter out false areas that have reflection features similar to those of screws. A self-optimisation strategy and weighted fusion are employed to connect the two stages. The detection framework was implemented on a robotic platform designed for disassembling electric vehicle batteries. This method allows screw removal to be conducted automatically in complex disassembly tasks, and the utilisation of the reflection feature and data learning provides new ideas for further research.
Original languageEnglish
Article number946
Number of pages21
JournalMicromachines
Volume14
Issue number5
DOIs
Publication statusPublished - 27 Apr 2023

Keywords

  • robotic disassembly
  • screw detection
  • illumination condition
  • reflection feature
  • data learning

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