Pakistan Journal of Engineering & Technology (Dec 2021)

Structural Crack Detection and Classification using Deep Convolutional Neural Network

  • Madiha Zeeshan,
  • Syed M. Adnan,
  • Wakeel Ahmad,
  • Farrukh Zeeshan Khan

DOI
https://doi.org/10.51846/vol4iss4pp50-56
Journal volume & issue
Vol. 4, no. 4

Abstract

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Cracks are indicators that affect the stability and integrity of infrastructures. Fast, reliable, and cost-effective crack detection methods are required to overcome the shortcomings of traditional approaches. This paper works on a transfer learning approach based on the deep convolutional neural network model VGG19 to detect cracks. Further, the proposed method is based on an improved VGG-19 model. The experiment is carried out on the SDNET2018 annotated images dataset. The dataset comprises of total 15k images, training set consists of 5000 cracked and 5000 un-cracked images of walls, pavements, and bridges. The experimental results on the proposed model provide 91.8% accuracy in detecting cracks on the testing set. The paper concluded that fine-tuning of the VGG19 (Visual Geometry Group) model accomplish satisfactory results in detecting cracks on images of multiple infrastructures.

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