Abstract
Abstract
Identification of damage and selection of a restoration strategy in concrete structures is contingent upon automatic inspection for crack detection and assessment. Most research on deep learning models for autonomous inspection has focused solely on measuring crack dimensions, omitting the generalization power of a model. This research utilizes a novel step transfer learning (STL) added extreme learning machine (ELM) approach to develop an automatic assessment strategy for surface cracks in concrete structures. STL is helpful in mining generalized abstract features from different sets of source images, and ELM helps the proposed model overcome the optimization limitations of traditional artificial neural networks. The proposed model achieved at least 2.5%, 4.8%, and 0.8% improvement in accuracy, recall, and precision, respectively, in comparison to the other studies, indicating that the proposed model could aid in the automated inspection of concrete structures, ensuring high generalization ability.
Funder
Zhejiang Normal University
Natural Science Foundation of Zhejiang Province
National Natural Science Foundation of China
Cited by
1 articles.
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