Temporal and spatial deep learning network for infrared thermal defect detection

Volume: 108, Pages: 102164 - 102164
Published: Dec 1, 2019
Abstract
Most common types of defects for composite are debond and delamination. It is difficult to detect the inner defects on a complex shaped specimen by using conventional optical thermography nondestructive testing (NDT) methods. In this paper, a hybrid of spatial and temporal deep learning architecture for automatic thermography defects detection is proposed. The integration of cross network learning strategy has the capability to significantly...
Paper Details
Title
Temporal and spatial deep learning network for infrared thermal defect detection
Published Date
Dec 1, 2019
Volume
108
Pages
102164 - 102164
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