Applying Deep Learning for automated visual verification of manual bracket installations

Author:

Quantrill Liam1,Oyekan John2,Turner Christopher3,Tiwari Ashutosh1

Affiliation:

1. University of Sheffield

2. University of York

3. University of Surrey

Abstract

Abstract In this work, we explore a deep learning based automated visual inspection and verification algorithm, based on the Siamese Neural Network architecture. This is explored alongside the typical Convolutional Neural Network. Consideration is also given to how the input pairs of images can affect the performance of the Siamese Neural Network, dependent on the nature of the dataset used. A case study is provided from the aircraft manufacturing industry focusing on the visual inspection of wing bracket installations. A novel voting scheme specific to the Siamese Neural Network which sees a single model vote on multiple reference images is validated in this work. The results obtained show great potential for the use of the Siamese Neural Network for automated visual inspection and verification tasks in aircraft manufacturing and similar industries where there is often a scarcity of training data available.

Publisher

Research Square Platform LLC

Reference24 articles.

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2. Grendel, H., Larek, R., Riedel, F., & Wagner, J. C. (2017). : Enabling manual assembly and integration of aerospace structures for Industry 4.0 - methods, Procedia Manufacturing, vol. 14, pp. 30–37.

3. Applying a fusion of wearable sensors and a cognitive inspired architecture to real-time ergonomics analysis of manual assembly tasks;Oyekan J;Journal of Manufacturing Systems,2021

4. A review of human error in aviation maintenance and inspection;Latorella KA;International Journal of Industrial Ergonomics,2000

5. Judi, E., Drury, C. G., Speed, A., Williams, A., & Khalandi, N. (2017). : The Role of Visual Inspection in the 21st Century, in Human Factors and Ergonomics Society annual meeting, Austin, Texas.

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