References
- Zou Y, Du D, Chang B, et al. Automatic weld defect detection method based on Kalman filtering, for real-time radiographic inspection of spiral pipe. NDT&E Int. 2015;721–729.
- Mery D, Berti MA. Automatic detection of welding defects using texture features. Insight. 2003;45(10):676–681.
- Sun Y, Peng B, Sun HY, et al. Real-time automatic detection of weld defects in steel pipe. NDT&E Int. 2005;38:522–528.
- Liao TW. Improving the accuracy of computer-aided radiographic weld inspection by feature selection. NDT&E Int. 2009;42:229–239.
- Anouncia SM, Saravanan R. Non-destructive testing using radiographic images – a survey. Insight. 2006;48:592–596.
- Movafeghi A. Using empirical mode decomposition and a fuzzy algorithm for the analysis of weld defect images. Insight Non-Destruct Test Condn Monit. 2015;57(1):35–39.
- Du D, Hou RS, Shao JX, et al. Registration of real-time X-ray image sequences for weld inspection. Nondestruct Test Eval. 2010;25:153–159.
- Silva R, Siqueira M, Calôba L, et al. Radiographics pattern recognition of welding defects using linear classifiers. Insight. 2001;43(10):669–674.
- Shao JX, Du D, Shi H, et al. Automatic weld recognition and extraction from real-time X-ray images using quadratic curve fitting and multi-order differences analysis of intensity profile. Insight. 2011;53:562–569.
- Gueguen L, Pesaresi M. Multi scale Harris corner detector based on differential morphological decomposition. Pattern Recog Lett. 2011;32(14):1714–1719.
- Xiaoming P, Zhou C, Ding M. Corner detection method based on wavelet transform, in proceedings of the multispectral image processing and pattern recognition. Int Soc Opt Photonics. 2001;4550:319–323.
- Rosten E, Drummond T. Machine learning for high-speed corner detection. 9th European Conference on Computer Vision. ECCV 2006: Computer Vision – ECCV 2006, pp 430–443.
- Yahaghi E. The detection of weld defect images using SFS and wavelet de-noising methods. Insight Non-Destruct Test Condn Monit. 2014;5(6):308–311.
- Barsky S, Petrou M. The 4-source photometric stereo technique for three-dimensional surfaces in the presence of highlights and shadows. IEEE Trans Pattern Anal Mach Intell. 2003;25(10):1239–1252.
- Yuen SY, Tsui YY, Chow CK. A fast marching formulation of perspective shape from shading under frontal illumination. Pattern Recog Lett. 2007;28(7):806–824.
- ISO 17636–2. Non-destructive testing of welds – radiographic testing – Part 2: X- and gamma-ray techniques with digital detectors. 2013.
- Nixon M, Aguado A. Feature extraction and image processing. 2nd ed. Netherlands: Elsevier; 2008.
- Yahia NB, Belhadj T, Brag S, et al. Automatic detection of welding defects using radiography with a neural approach. Procedia Eng. 2011;10:671–679.
- Sun Y, Bai P, Sun H-Y, et al. Real-time automatic detection of weld defects in steel pipe. NDT&E Int. 2005 October;38(7):522–528.
- Gonzalez RF, Wood RE. Digital image processing. 3rd ed. New Jersey, US: Pearson Prentice Hall; 2008.
- Yahia NB, Belhadj T, Brag S, Zghal A. Automatic detection of welding defects using radiography with a neural approach. Procedia Engineering.2011;10:671–679.
- Sun Y, Bai P, Sun H-Y, Zhou P. Real-time Automatic Detection Of Weld Defects in Steel Pipe. NDT & E International. October 2005;38(7):522–528.