Weld defect classification in radiographic images using unified deep neural network with multi-level features

Deep neural network (DNN) exhibits state-of-the-art performance in many fields including weld defect classification. However, there is still a large room for improving the classification performance over the generic DNN models. In this paper, a unified deep neural network with multi-level features i...

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Bibliographic Details
Main Authors: Yang, Lu (Author), Jiang, Hongquan (Author)
Other Authors: Massachusetts Institute of Technology. Laboratory for Manufacturing and Productivity (Contributor)
Format: Article
Language:English
Published: Springer Science and Business Media LLC, 2021-02-11T21:57:34Z.
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Online Access:Get fulltext
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042 |a dc 
100 1 0 |a Yang, Lu  |e author 
100 1 0 |a Massachusetts Institute of Technology. Laboratory for Manufacturing and Productivity  |e contributor 
700 1 0 |a Jiang, Hongquan  |e author 
245 0 0 |a Weld defect classification in radiographic images using unified deep neural network with multi-level features 
260 |b Springer Science and Business Media LLC,   |c 2021-02-11T21:57:34Z. 
856 |z Get fulltext  |u https://hdl.handle.net/1721.1/129748 
520 |a Deep neural network (DNN) exhibits state-of-the-art performance in many fields including weld defect classification. However, there is still a large room for improving the classification performance over the generic DNN models. In this paper, a unified deep neural network with multi-level features is proposed for weld defect classification. Firstly, we define 11 weld defect features as inputs of our proposed classification model. Not limited to geometric and intensity features, 4 features based on the intensity contrast between weld defect and its background are proposed in this paper. Secondly, we construct a novel deep learning framework: a unified deep neural network, where multi-level features of each hidden layer are fused by the last hidden layer to predict the type of weld defect comprehensively. In addition, we investigate pre-training and fine-turning strategies to get better generalization performance with small dataset. Comparing with other classification methods like SVM and generic DNN model, our framework takes full advantage of multi-level features extracted from each hidden layer, an outstanding performance is shown where the classification accuracy is improved by 3.18% and 4.33% on the test dataset, to reach 91.36%. 
546 |a en 
655 7 |a Article 
773 |t Journal of Intelligent Manufacturing