Segmentation of Additive Manufacturing Defects Using U-Net

被引:30
作者
Vivian Wen Hui Wong [1 ]
Ferguson, Max [1 ]
Law, Kincho H. [1 ]
Yung-Tsun Tina Lee [2 ]
Witherell, Paul [2 ]
机构
[1] Stanford Univ, Dept Civil & Environm Engn, Engn Informat Grp, Stanford, CA 94305 USA
[2] NIST, Syst Integrat Div, Gaithersburg, MD 20899 USA
关键词
smart manufacturing; defect detection; additive manufacturing; convolutional neural networks; X-ray computed tomography (XCT) images; machine learning; artificial intelligence; data-driven engineering; machine learning for engineering applications; POROSITY;
D O I
10.1115/1.4053078
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Additive manufacturing (AM) provides design flexibility and allows rapid fabrications of parts with complex geometries. The presence of internal defects, however, can lead to the deficit performance of the fabricated part. X-ray computed tomography (XCT) is a nondestructive inspection technique often used for AM parts. Although defects within AM specimens can be identified and segmented by manually thresholding the XCT images, the process can be tedious and inefficient, and the segmentation results can be ambiguous. The variation in the shapes and appearances of defects also poses difficulty in accurately segmenting defects. This article describes an automatic defect segmentation method using U-Net-based deep convolutional neural network (CNN) architectures. Several models of U-Net variants are trained and validated on an AM XCT image dataset containing pores and cracks, achieving a best mean intersection over union (IOU) value of 0.993. The performance of various U-Net models is compared and analyzed. Specific to AM porosity segmentation with XCT images, several techniques in data augmentation and model development are introduced. This article demonstrates that U-Net can be effectively applied for automatic segmentation of AM porosity from XCT images with high accuracy. The method can potentially help improve the quality control of AM parts in an industry setting.
引用
收藏
页数:9
相关论文
共 51 条
[1]  
Bersen J., 1986, Eighth International Conference on Pattern Recognition. Proceedings (Cat. No.86CH2342-4), P1251
[2]   Image-Based Surface Defect Detection Using Deep Learning: A Review [J].
Bhatt, Prahar M. ;
Malhan, Rishi K. ;
Rajendran, Pradeep ;
Shah, Brual C. ;
Thakar, Shantanu ;
Yoon, Yeo Jung ;
Gupta, Satyandra K. .
JOURNAL OF COMPUTING AND INFORMATION SCIENCE IN ENGINEERING, 2021, 21 (04)
[3]   Non-Local Means Denoising [J].
Buades, Antoni ;
Coll, Bartomeu ;
Morel, Jean-Michel .
IMAGE PROCESSING ON LINE, 2011, 1 :208-212
[4]   Experimental study of porosity and its relation to fatigue mechanisms of model Al-Si7-Mg0.3 cast Al alloys [J].
Buffière, JY ;
Savelli, S ;
Jouneau, PH ;
Maire, E ;
Fougères, R .
MATERIALS SCIENCE AND ENGINEERING A-STRUCTURAL MATERIALS PROPERTIES MICROSTRUCTURE AND PROCESSING, 2001, 316 (1-2) :115-126
[5]   Region-Based Semantic Segmentation with End-to-End Training [J].
Caesar, Holger ;
Uijlings, Jasper ;
Ferrari, Vittorio .
COMPUTER VISION - ECCV 2016, PT I, 2016, 9905 :381-397
[6]  
Cicek Ozgun, 2016, Medical Image Computing and Computer-Assisted Intervention - MICCAI 2016. 19th International Conference. Proceedings: LNCS 9901, P424, DOI 10.1007/978-3-319-46723-8_49
[7]   ResUNet-a: A deep learning framework for semantic segmentation of remotely sensed data [J].
Diakogiannis, Foivos, I ;
Waldner, Francois ;
Caccetta, Peter ;
Wu, Chen .
ISPRS JOURNAL OF PHOTOGRAMMETRY AND REMOTE SENSING, 2020, 162 :94-114
[8]   The Importance of Skip Connections in Biomedical Image Segmentation [J].
Drozdzal, Michal ;
Vorontsov, Eugene ;
Chartrand, Gabriel ;
Kadoury, Samuel ;
Pal, Chris .
DEEP LEARNING AND DATA LABELING FOR MEDICAL APPLICATIONS, 2016, 10008 :179-187
[9]  
Faes M., 2014, INT C POLYM MOULDS I
[10]   Detection and Segmentation of Manufacturing Defects with Convolutional Neural Networks and Transfer Learning [J].
Ferguson, Max ;
Ak, Ronay ;
Lee, Yung-Tsun Tina ;
Law, Kincho H. .
SMART AND SUSTAINABLE MANUFACTURING SYSTEMS, 2018, 2 (01) :137-164