Identification of Location and Geometry of Invisible Internal Defects in Structures using Deep Learning and Surface Deformation Field

Author:

Timilsina Suman12ORCID,Jang Seong Min3,Jo Cheol Woo1,Kwon Yong Nam4,Sohn Kee-Sun5,Lee Kwang Ho6,Kim Ji Sik1ORCID

Affiliation:

1. School of Nano & Advanced Materials Engineering Kyungpook National University Kyeongbuk 37224 Republic of Korea

2. KNU Research Institute of Artificial Intelligent Diagnosis Technology of Multi-scale Organic and Inorganic Structure Kyungpook National University Kyeongbuk 37224 Republic of Korea

3. Department of Advanced Science and Technology Convergence Kyungpook National University Kyeongbuk 37224 Republic of Korea

4. Department of Digital Platform Korea Institute of Materials Science Changwon 51508 Republic of Korea

5. Nanotechnology and Advanced Materials Engineering Sejong University 209 Neungdong ro, Gwangjin-gu Seoul 143-747 Republic of Korea

6. Department of Automotive Engineering Kyungpook National University Kyeongbuk 37224 Republic of Korea

Abstract

On‐site inspection of invisible subsurface defects in multiscale structural materials by conventional nondestructive testing (NDT) methods, such as X‐ray and ultrasound, requires complex sample preparation and data acquisition processes. Moreover, the inspected area is very small. Herein, a simple, inexpensive, and ultrasensitive NDT method for identifying and classifying the geometries of subsurface defects using commercial cameras, digital image correlation software, and object detection (OD) algorithms is developed. Three OD algorithms—Faster region‐based convolutional neural network (Faster R‐CNN), Mask R‐CNN, and you‐only‐look‐once (YOLO)v3—are evaluated for their ability to locate defects and identify defect geometries. Specifically, bounding boxes of two sizes (large and small) are applied to the regions of defect‐induced perturbations in strain tensors, which serve as virtual representatives of invisible subsurface defects. The performance of the proposed approach is validated on test datasets of known and unknown defect types. The experimental results confirm that the proposed approach can effectively utilize the surface deformation field information to accurately and reliably locate and identify subsurface defects. The method is nondestructive and low cost, enables real‐time detection, is robust against noise‐dominated deformation fields, and can be applied to various structural deformations. The method is therefore suitable for multiscale structural health monitoring and characterization of internal defects in materials.

Funder

National Research Foundation of Korea

Publisher

Wiley

Subject

General Medicine

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4. K.He G.Gkioxari P.Dollár R.Girshick inProc. IEEE Int. Conf. Computer Vision Venice Italy2017.

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