Smart Structures and Systems

Volume 29, Number 1, 2022, pages 195-206

DOI: 10.12989/sss.2022.29.1.195

An active learning method with difficulty learning mechanism for crack detection

Jiangpeng Shu, Jun Li, Jiawei Zhang, Weijian Zhao, Yuanfeng Duan and Zhicheng Zhang

Abstract

Crack detection is essential for inspection of existing structures and crack segmentation based on deep learning is asignificant solution. However, datasets are usually one of the key issues. When building a new dataset for deep learning, laborious and time-consuming annotation of a large number of crack images is an obstacle. The aim of this study is to develop an approach that can automatically select a small portion of the most informative crack images from a large pool in order to annotate them, not to label all crack images. An active learning method with difficulty learning mechanism for crack segmentation tasks is proposed. Experiments are carried out on a crack image dataset of a steel box girder, which contains 500 images of 320

Key Words

acquisition function; active learning; crack detection; probability attention module; semantic segmentation

Address

(1) Jiangpeng Shu, Jun Li, Jiawei Zhang, Weijian Zhao, Yuanfeng Duan, Zhicheng Zhang: College of Civil Engineering and Architecture, Zhejiang University, 310058 Hangzhou, China; (2) Jun Li: Center for Balance Architecture, Zhejiang University, 310058 Hangzhou, China.