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Algorithms for Vision-Based Quality Control of Circularly Symmetric Components.

Paolo Brambilla1, Chiara Conese1, Davide Maria Fabris1

  • 1Department of Mechanical Engineering, Politecnico di Milano, Via La Masa 1, 20156 Milan, Italy.

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|March 11, 2023
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Summary
This summary is machine-generated.

A standard algorithm outperforms Deep Learning (DL) for inspecting knurled washers, offering better accuracy and speed. However, DL excels at identifying specific defects like damaged teeth with over 99% accuracy.

Keywords:
deep learningdefect classificationimage processingmachine learningsignal processingvision-based quality inspection

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Area of Science:

  • Industrial manufacturing automation
  • Computer vision for quality control
  • Artificial intelligence in quality inspection

Background:

  • Industrial quality inspection is rapidly advancing with AI and vision techniques.
  • Defect identification in circularly symmetric mechanical components with periodic elements presents unique challenges.
  • Knurled washers are a specific case study for evaluating automated inspection methods.

Purpose of the Study:

  • To compare the performance of a standard image analysis algorithm with a Deep Learning (DL) approach for defect detection in knurled washers.
  • To evaluate accuracy and computational efficiency of both methods.
  • To explore the potential extension of these methods to other symmetric components.

Main Methods:

  • A standard algorithm utilizing pseudo-signals from grey-scale image analysis of concentric annuli was employed.
  • A Deep Learning (DL) approach focused inspection on specific, potentially defective areas of the component profile.
  • Performance metrics including accuracy and computational time were measured for both techniques.

Main Results:

  • The standard algorithm demonstrated superior overall accuracy and faster computational time compared to the DL approach.
  • The Deep Learning (DL) method achieved an accuracy exceeding 99% specifically for identifying damaged teeth.
  • Both methods showed potential for application to other circularly symmetric components.

Conclusions:

  • For general knurled washer inspection, the standard algorithm is more efficient and accurate.
  • Deep Learning (DL) offers high precision for specific defect types, such as damaged teeth.
  • The study highlights the trade-offs between different AI-driven quality inspection methods.