Print

2022 №04 (02) DOI of Article
10.37434/tdnk2022.04.03
2022 №04 (04)


Technical Diagnostics and Non-Destructive Testing #4, 2022, pp. 17-26

Image processing technologies based on complexing data (Reviev)

D.V. Storozhyk, A.G. Protasov

NTUU «Igor Sikorsky Kyiv Polytechnic Institute». 37 Peremohy Ave., 03056, Kyiv, Ukraine. E-mail: a.g.protasov@gmail.com

Recently, there has been an increase in the automation of complex technological processes in various industries, which is caused by the need to increase production efficiency. Since non-destructive testing (NDT) has become an integral part of many industries, this trend is also observed in it. The obtained image containing information about the condition and quality of the object is the final result of the majority of testing methods. Therefore, automation of processing and analysis of received images is an urgent task for NDT today. The purpose of this article is to review image-processing technologies based on data integration and to consider the prospects of applying these methods to solving the problems of thermal NDT. The article describes the main theoretical principles of image fusion technology, considers the classification of fusion methods, and various modern methods of image fusion of different levels with their pros and cons. Various methods based on spatial data and transformations with quality metrics and their application in various fields were also discussed. In addition, the application of the technology of fusion in the problems of image formation during implementation of the thermal tomography method is considered. The following steps are proposed for the study of the use of fusion in the problems of materials diagnosis. 61 Ref.
Keywords: thermal nondestructive testing, image integration, neural networks

Received: 04.10.2022

References

1. Petryk, V.F., Protasov, A.G., Galagan, R.M. et al. (2021) Wireless technologies in automation of nondestructive testing. Vcheni Zapysky TNU. Seriya: Tekhnichni Nauky, Vol. 32 (71), 5, 25-29 [in Ukrainian]. https://doi.org/10.32838/2663-5941/2021.5/05
2. Rokni, K. et al. (2015) A new approach for surface water change detection: Integration of pixel level image fusion and image classification techniques. Int. J. of Applied Earth Observe, Vol. 34, 226-234. https://doi.org/10.1016/j.jag.2014.08.014
3. Storozhyk, D.V., Muraviov, O.V., Protasov, A.G. et al. (2020) Complexing of multispectral images as a method of improvement of their information level at binary segmentation. KPI Science News, 2, 83-87 [in Ukrainian]. https://doi.org/10.20535/kpi-sn.2020.2.197955
4. Ma, J., Ma, Y., Li, C. (2019) Infrared and visible image fusion methods and applications: a survey. Information Fusion, 1(45), 153-178. https://doi.org/10.1016/j.inffus.2018.02.004
5. Kaur, H., Koundal, D., Kadyan, V. (2021) Image Fusion Techniques: A Survey. Computational Methods in Engineering, 28, 4425-4447. https://doi.org/10.1007/s11831-021-09540-7
6. Mamta Sharma (2016) A Review: Image fusion techniques and applications. Int. J. of Computer Sci. and Information Technologies, Vol. 7(3), 1082-1085.
7. Li, S., Kang, X., Fang, L. et al. (2017) Pixel-level image fusion: a survey of the state of the art. Information Fusion, 1(33), 100-112. https://doi.org/10.1016/j.inffus.2016.05.004
8. Maruthi, R., Lakshmi, I. (2017) Multi-focus image fusion methods - a usrvey. Computer Engineering, 19(4), 9-25.
9. Meher, B., Agrawal, S., Panda, R., Abraham, A. (2019) A survey on region based image fusion methods. Information Fusion, 1(48), 119-132. https://doi.org/10.1016/j.inffus.2018.07.010
10. Yang, J., Ma, Y., Yao, W., Lu, W. (2008) A spatial domain and frequency domain integrated approach to fusion multifocus images. The Int. Archives of the Photogrammetry, remote sensing and spatial Information Sci., 37(PART B7).
11. Morris, C., Rajesh, R.S. (2014) Survey of spatial domain image fusion techniques. Int. J. of Advanced Research in Computer Sciences and Engineering Information Technologies, 2(3), 249-254.
12. Jasiunas, M.D., Kearney, D.A., Hopf, J., Wigley, G.B. (2002) Image fusion for uninhabited airborne vehicles. IEEE Int. Conf. on Field-Programmable Technology, Proceedings, 348-351. https://doi.org/10.1109/FPT.2002.1188708
13. Bavachan, B., Krishnan, D.P. (2014) A survey on image fusion techniques. Int. J. of Research in Computers and Computation Technologies, 3(3), 049-052.
14. Banu, R.S. (2011) Medical image fusion by the analysis of pixel level multi-sensor using discrete wavelet Transform. In: Proc. of the National conf. on Emerging Trends in Computing Science, 291-297.
15. Song, L., Lin, Y., Feng, W., Zhao, M. (2009) A novel automatic weighted image fusion algorithm. Int. Workshop on Intelligent Systems and Applications (ISA), 1-4. https://doi.org/10.1109/IWISA.2009.5072656
16. Zhijun Wang et al. (2005) A comparative Analysis of image fusion methods. IEEE Transact. on Geosciences and Remote Sensors. Vol. 43, 6, 1391-1402. https://doi.org/10.1109/TGRS.2005.846874
17. Cetin, M., Tepecik, A. (2016) Intensity-hue-saturationbased image fusion using iterative linear regression. J. of Applied Remote Sensing, 10(4), 045019 https://doi.org/10.1117/1.JRS.10.045019
18. Mishra, D., Palkar, B. (2015) Image fusion techniques: a review. Int. J. of Computer Application, 130(9), 7-13. https://doi.org/10.5120/ijca2015907084
19. Mandhare, R.A., Upadhyay, P., Gupta S. (2013) Pixel-level image fusion using Brovey transform and wavelet transform. Int. J. of Advanced Research in Electrical, Electronics and Instrumentation Engineering, Vol. 2, Issue 6, 2690-2695.
20. Lindsay I. Smith (2002) A tutorial on Principal Components Analysis. Technical Report OUCS-2002-12 Department of Computer Science, University of Otago, New Zealand, 28.
21. Ujwala, P., Mudengudi, U. (2011) Image fusion using hierarchical PCA. IEEE Int. Conf. on Image Information Processing (ICIIP), 1-6, 3-5.
22. Olkkonen, H., Pesola, P. (1996) Gaussian pyramid wavelet transform for multiresolution analysis of images. Graphic Models Image Process, 58(4), 394-398. https://doi.org/10.1006/gmip.1996.0032
23. Jianbing Shen, Ying Zhao, Shuicheng Yan, Xuelong Li (2014) Exposure Fusion Using Boosting Laplacian Pyramid. IEEE Transactions on Cybernetics, Vol. 44, 9. https://doi.org/10.1109/TCYB.2013.2290435
24. Chandrasekhar, C., Viswanath, A., Narayana Reddy, S. (2013) Implementation of image fusion technique using DWT for micro air vehicle applications. Field-Programmable Gate Array (FPGA), 4(8), 307-315.
25. Dong, J., Dafang, Z., Yaohuan, H., Jinying, F. (2011) Survey of multispectral image fusion techniques in remote sensing applications. In: Image Fusion and its Applications. Alcorn State University, USA.
26. Wu, D., Yang, A., Zhu, L., Zhang, C. (2014) Survey of multi-sensor image fusion. Int. conf. on Life System Modeling and Simulation. Springer, Berlin, 358-367. https://doi.org/10.1007/978-3-662-45283-7_37
27. Naidu, V.P. (2012) Discrete cosine transform based image fusion techniques. J. of Communication, Navigation and Signal Processing, 1(1), 35-45.
28. Desale Rajenda Pandit, Verma Sarita V. (2013) Study and analysis of PCA, DCT & DWT based image fusion techniques. IEEE Int. Conf. on Signal Processing Image Processing & Pattern Recognition (ICSIPR), Coimbatore, 66-69. https://doi.org/10.1109/ICSIPR.2013.6497960
29. Tang Han, Xiao Bin, Li Weisheng,Wang Guoyin (2018) Pixel convolutional neural network for multi-focus image fusion. Information Sciences, Vol. 433-434, 125-141. https://doi.org/10.1016/j.ins.2017.12.043
30. Liu,Y., Chen, X., Ward, R.K., Wang, J.Z. (2016) Image Fusion with Convolutional Sparse Representation. IEEE Signal Processing Letters, Vol. 23, 12, 1882-1886. DOI:https://doi. org/10.1109/LSP.2016.2618776 https://doi.org/10.1109/LSP.2016.2618776
31. Cheng, Z., Sun, H., Takeuchi, M., Katto, J. (2018) Deep Convolutional AutoEncoder-based Lossy Image Compression, Picture Coding Symposium (PCS), 253-257. https://doi.org/10.1109/PCS.2018.8456308
32. Uma, K.V. (2018). Improving the Classification Accuracy of Noisy Dataset by Effective Data Preprocessing. Int. J. of Computer Applications, 180(36), 37-46. https://doi.org/10.5120/ijca2018916908
33. Patil, V., Sale, D., Joshi, M.A. (2013) Image fusion methods and quality assessment parameters. Asian J. of Engineering and Applied Technology, 2(1), 40-46.
34. Li, M., Cai, W., Tan, Z. (2006) A region-based multi-sensor image fusion scheme using pulse-coupled neural network. Pattern Recognition Letters, 27(16), 948-1956. https://doi.org/10.1016/j.patrec.2006.05.004
35. Kusum Rani, Reecha Sharma (2013) Study of different image fusion algorithm. Int. J. of Emerging Technology and Advanced Engineering (IJETAE), Vol. 3, Issue 5.
36. Paramanandham, N., Rajendiran, K. (2018) Multi sensor image fusion for surveillance applications using hybrid image fusion algorithm. Multimedia Tools Application, 77(10), 12405-12436. https://doi.org/10.1007/s11042-017-4895-3
37. Du, J., Li, W., Lu, K., Xiao, B. (2016) An overview of multi-modal medical image fusion. Neurocomputing, 26(215), 3-20. https://doi.org/10.1016/j.neucom.2015.07.160
38. Jin, X., Jiang, Q., Ya,o S. et.al. (2017) A survey of infrared and visual image fusion methods. Infrared Physics Technology, 1(85), 478-501. https://doi.org/10.1016/j.infrared.2017.07.010
39. Anna de Juan et. al. (2019) Data Fusion Methodology and Applications. Data Handling in Science and Technology, Vol. 31, 205-233. https://doi.org/10.1016/B978-0-444-63984-4.00008-9
40. Ram-Nandan, P. Singh (2000) An Intelligent Approach to Positive Target Identification. Soft Computing and Intelligent Systems, Chapter 22, 5549-5570.
41. Sreeja, G., Saraniya, O. (2019) Image Fusion Through Deep Convolutional Neural Network. Deep Learning and Parallel Computing Environment for Bioengineering Systems, Chapter 3, 37-52. https://doi.org/10.1016/B978-0-12-816718-2.00010-5
42. Anna de Juan (2020) Multivariate curve resolution for hyperspectral imaging analysis. Hyperspectral Imaging Data Handling in Science and Technology, Vol. 32, 115-146. https://doi.org/10.1016/B978-0-444-63977-6.00007-9
43. Anke Meyer-Baese, Volker Schmid (2014) The Wavelet Transform in Medical Imaging. Pattern Recognition and Signal Analysis in Medical Imaging (Second Edition), 113-134. https://doi.org/10.1016/B978-0-12-409545-8.00004-2
44. Rajalingam B., Priya R., Bhavani R. (2021) Comparative analysis of hybrid fusion algorithms using neurocysticercosis, neoplastic, Alzheimer`s, and astrocytoma disease affected multimodality medical images Advanced Machine Vision Paradigms for Medical Image Analysis Hybrid. Computational Intelligence for Pattern Analysis and Understanding, Chapter 5, 131-167. https://doi.org/10.1016/B978-0-12-819295-5.00005-6
45. Shutao, Li, Bin, Yang (2008) Region-based multi-focus image fusion. Image Fusion, 343-365. https://doi.org/10.1016/B978-0-12-372529-5.00009-3
46. Qiang Wang, Yi Shen, Jing Jin (2008) Performance evaluation of image fusion techniques. Image Fusion, 469-492. https://doi.org/10.1016/B978-0-12-372529-5.00017-2
47. Fatima A. Merchant, Kenneth R. Castleman (2009) Computer-Assisted Microscopy. The Essential Guide to Image Processing, 777-831. https://doi.org/10.1016/B978-0-12-374457-9.00027-5
48. Todd W. Kelley, Jay L. Patel (2018) Genetic Aspects of Hematopoietic Malignancies. Principles and Applications of Molecular Diagnostics, 201-234. https://doi.org/10.1016/B978-0-12-816061-9.00008-4
49. Jagdeep Singh, Vijay Kumar Banga (2014) An enhanced DCT based image fusion using adaptive histogram equalization. Int. J. of Computer Applications, Vol. 87, 12, 0975-8887. https://doi.org/10.5120/15262-3955
50. Changqi Sun, Cong Zhang, Naixue Xiong (2020) Infrared and visible image fusion techniques based on deep learning: A Review. Electronics, 9, 21-62. https://doi.org/10.3390/electronics9122162
51. Самолюк Т.А. (2019) Нейромережі GAN у створенні нових моделей. Комп`ютерні засоби, мережі та системи, 18, 86-90.
52. Levchunets, D.O., Iskruk, V.V., Ivanov, A.V. (2014) Comparison of methods of spectral filtration with different bases. Visnyk KhmNU, 3(213), 17-20 [in Ukrainian].
53. Kupchenko, L.F., Rybiyak, A.S., Gurin, O.A. (2018) Evaluation of consistency of optimal dynamic spectral filtration in optoelectronic systems of detection of objects. Radiofizyka ta Elektronika, 23(1), 42-52 [in Russian]. https://doi.org/10.15407/rej2018.01.042
54. Momot, A.S., Galagan, R.M. (2017) Application of neural network technologies for solution of inverse problems of nondestructive testing. In: Abstr. of Papers of Sci.-Tekh. Conf. on Instrument Making: State-of-the-Art and Prospects, Kyiv, 144 [in Ukrainian].
55. Melnyk, S., Petrichenko, G., Tuluzov, I. (2016) New methods of thermal tomography, as well as filtration of thermal images. Vymiryuvalna Tekhnika ta Metrologiya, 77, 48-57 [in Ukrainian]. https://doi.org/10.23939/istcmtm2016.77.048
56. Momot, A.S., Galagan, R.M. (2018) The Use of Backpropagation Artificial Neural Networks in Thermal Tomography. IEEE 1st Int. Conf. on System Analysis & Intelligent Computing (SAIC), 1-6.
57. Halloua, Н., Elhassnaoui, A., Saifi, A., et.al. (2016) An intelligent method using neural networks for Depth detection by standard thermal contrast in active thermography. In: Proc. 13th Int. Conf. on Quantitative Infrared Thermography (QIRT 2016), July, Gdańsk, Poland. https://doi.org/10.21611/qirt.2016.110
58. Bardia Yousefi, Davood Kalhor, Rubén Usamentiaga et. al. (2018) Application of Deep Learning in Infrared Non-Destructive Testing. In: 14th Int. Conf. on Quantitative Infrared Thermography (QIRT 2018), June, Berlin, Germany. https://doi.org/10.21611/qirt.2018.p27
59. Galagan, R., Momot, A. (2019) Influence of architecture and training dataset parameters on the neural networks efficiency in thermal nondestructive testing. Sciences of Europe, Vol. 1, 44, 20-25.
60. Chulkov, А.О., Sommier, A., Pradere, C., Vavilov, V.P. (2021) Analyzing efficiency of optical and THz infrared thermography in nondestructive testing of GFRPs by using the Tanimoto criterion. NDT & E International, Vol. 117, 102-383. https://doi.org/10.1016/j.ndteint.2020.102383
61. Eisler, K., Homma, C., Goldammer, M., Rothenfusser, M. (2013) Fusion of visual and infrared thermography images for advanced assessment in non-destructive testing. Review Sci. Instruments, 84, 064902. https://doi.org/10.1063/1.4808280

Advertising in this issue: