Damage detection using in-domain and cross-domain transfer learning

被引:40
作者
Bukhsh, Zaharah A. [1 ]
Jansen, Nils [2 ]
Saeed, Aaqib [1 ]
机构
[1] Eindhoven Univ Technol, Eindhoven, Netherlands
[2] Radboud Univ Nijmegen, Nijmegen, Netherlands
关键词
Damage detection; Transfer learning; Pre-trained models; In-domain learning; Cross-domain learning; Visual inspection; CONVOLUTIONAL NEURAL-NETWORKS; CRACK DETECTION;
D O I
10.1007/s00521-021-06279-x
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
We investigate the capabilities of transfer learning in the area of structural health monitoring. In particular, we are interested in damage detection for concrete structures. Typical image datasets for such problems are relatively small, calling for the transfer of learned representation from a related large-scale dataset. Past efforts of damage detection using images have mainly considered cross-domain transfer learning approaches using pre-trained ImageNet models that are subsequently fine-tuned for the target task. However, there are rising concerns about the generalizability of ImageNet representations for specific target domains, such as for visual inspection and medical imaging. We, therefore, evaluate a combination of in-domain and cross-domain transfer learning strategies for damage detection in bridges. We perform comprehensive comparisons to study the impact of cross-domain and in-domain transfer, with various initialization strategies, using six publicly available visual inspection datasets. The pre-trained models are also evaluated for their ability to cope with the extremely low-data regime. We show that the combination of cross-domain and in-domain transfer persistently shows superior performance specially with tiny datasets. Likewise, we also provide visual explanations of predictive models to enable algorithmic transparency and provide insights to experts about the intrinsic decision logic of typically black-box deep models.
引用
收藏
页码:16921 / 16936
页数:16
相关论文
共 78 条
[1]   1-D CNNs for structural damage detection: Verification on a structural health monitoring benchmark data [J].
Abdeljaber, Osama ;
Avci, Onur ;
Kiranyaz, Mustafa Serkan ;
Boashash, Boualem ;
Sodano, Henry ;
Inman, Daniel J. .
NEUROCOMPUTING, 2018, 275 :1308-1317
[2]   Comparison of Visual Inspection and Structural-Health Monitoring As Bridge Condition Assessment Methods [J].
Agdas, Duzgun ;
Rice, Jennifer A. ;
Martinez, Justin R. ;
Lasa, Ivan R. .
JOURNAL OF PERFORMANCE OF CONSTRUCTED FACILITIES, 2016, 30 (03)
[3]  
[Anonymous], 2020, ARXIV202020010191
[4]  
[Anonymous], 2018, Mobility and Transport
[5]   Evaluation of deep learning approaches based on convolutional neural networks for corrosion detection [J].
Atha, Deegan J. ;
Jahanshahi, Mohammad R. .
STRUCTURAL HEALTH MONITORING-AN INTERNATIONAL JOURNAL, 2018, 17 (05) :1110-1128
[6]   Structural health monitoring using extremely compressed data through deep learning [J].
Azimi, Mohsen ;
Pekcan, Gokhan .
COMPUTER-AIDED CIVIL AND INFRASTRUCTURE ENGINEERING, 2020, 35 (06) :597-614
[7]   Crack Segmentation on UAS-based Imagery using Transfer Learning [J].
Benz, Christian ;
Debus, Paul ;
Ha, Huy Khanh ;
Rodehorst, Volker .
2019 INTERNATIONAL CONFERENCE ON IMAGE AND VISION COMPUTING NEW ZEALAND (IVCNZ), 2019,
[8]   Autonomous concrete crack detection using deep fully convolutional neural network [J].
Cao Vu Dung ;
Le Duc Anh .
AUTOMATION IN CONSTRUCTION, 2019, 99 :52-58
[9]  
Carr TA, 2018, 2018 IEEE WORKSHOP ON ENVIRONMENTAL, ENERGY, AND STRUCTURAL MONITORING SYSTEMS (EESMS), P42
[10]   Automatic crack classification and segmentation on masonry surfaces using convolutional neural networks and transfer learning [J].
Dais, Dimitris ;
Bal, Ihsan Engin ;
Smyrou, Eleni ;
Sarhosis, Vasilis .
AUTOMATION IN CONSTRUCTION, 2021, 125