Small-sample data-driven lightweight convolutional neural network for asphalt pavement defect identification

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

2 Scopus Citations
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Author(s)

  • Jia Liang
  • Qipeng Zhang
  • Xingyu Gu

Detail(s)

Original languageEnglish
Article numbere03643
Journal / PublicationCase Studies in Construction Materials
Volume21
Online published14 Aug 2024
Publication statusPublished - Dec 2024

Link(s)

Abstract

Automatic detection technology provides a reliable method for civil engineering distress detection. However, to overcome limitations of computational resources and the significant cost of image acquisition, this study proposes a simplified network parameter-based pavement crack classification network (PCCNet) to achieve efficient and robust crack classification. Firstly, a lightweight classification model is developed based on a shuffle unit and inverted residual architecture, designed to deliver high-performance pavement crack classification with limited computing resources. Secondly, a novel training method is proposed to accurately identify pavement defects on small-sample pavement images datasets. Additionally, the interpretability of neural network in pavement defect detection is enhanced by visualizing training process. The results demonstrate that the model achieved a classification accuracy of 97.89 % on the augmented pavement image dataset and a classification accuracy of over 83 % on multi-source asphalt pavement images. Furthermore, visualizing intermediate features further enhanced the high-precision recognition ability of the lightweight model. © 2024 The Authors

Research Area(s)

  • Automatic identification, Class activation mapping, Inverted residual, Lightweight model, Pavement engineering

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