Concrete Defect Localization Based on Multilevel Convolutional Neural Networks
Yameng Wang,
Lihua Wang,
Wenjing Ye
et al.
Abstract:Concrete structures frequently manifest diverse defects throughout their manufacturing and usage processes due to factors such as design, construction, environmental conditions and distress mechanisms. In this paper, a multilevel convolutional neural network (CNN) combined with array ultrasonic testing (AUT) is proposed for identifying the locations of hole defects in concrete structures. By refining the detection area layer by layer, AUT is used to collect ultrasonic signals containing hole defect information… Show more
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