Application of digital image processing technique in the microstructure analysis and the machinability investigation
OBRABOTKAMETALLOV Vol. 23 No. 4 2021 32 TECHNOLOGY 5. Ghosh S., Das N., Das I., Maulik U. Understanding deep learning techniques for image segmentation. ACM Computing Surveys (CSUR) , 2019, vol. 52 (4), pp. 1–35. 6. Tu Z., Bai X. Auto-context and its application to high-level vision tasks and 3d brain image segmentation. IEEE Transactions on Pattern Analysis and Machine Intelligence , 2009, vol. 32 (10), pp. 1744–1757. 7. Kang B.-H. A review on image and video processing. International Journal of Multimedia and Ubiquitous Engineering , 2007, vol. 2 (2), pp. 49–64. 8. Collins T.J. Image for microscopy. Biotechniques , 2007, vol. 43 (S1), pp. S25–S30. 9. Kaur D., Kaur Y. Various image segmentation techniques: a review. International Journal of Computer Science and Mobile Computing , 2014, vol. 3 (5), pp. 809–814. 10. Dhanachandra N., Chanu Y.J. Image segmentation method using k-means clustering algorithm for color image. Advanced Research in Electrical and Electronic Engineering , 2015, vol. 2 (11), pp. 68–72. 11. Yedla M., Pathakota S.R., Srinivasa T.M. Enhancing K-means clustering algorithm with improved initial center. International Journal of Computer Science and Information Technologies , 2010, vol. 1 (2), pp. 121–125. 12. Dhanachandra N., Manglem K., Chanu Y.J. Image segmentation using K-means clustering algorithm and subtractive clustering algorithm. Procedia Computer Science , 2015, vol. 54, pp. 764–771. 13. Nawaz A., Zhiqiu H., Senzhang W., Hussain Y., Naseer A., Izhar M., Khan Z. Mode Inference using enhanced Segmentation and Pre-processing on raw Global Positioning System data. Measurement and Control , 2020, vol. 53 (7–8), pp. 1144–1158. 14. Singh H., Mao Y., Sreeranganathan A., Gokhale A.M. Application of digital image processing for implementation of complex realistic particle shapes/morphologies in computer simulated heterogeneous microstructures. Modelling and Simulation in Materials Science and Engineering , 2006, vol. 14 (3), pp. 351–363. 15. Lee S.G., Mao Y., Gokhale A.M., Harris J., Horstemeyer M.F. Application of digital image processing for automatic detection and characterization of cracked constituent particles/inclusions in wrought aluminum alloys. Materials Characterization , 2009, vol. 60 (9), pp. 964–970. 16. Kakani S.L. Material science . New Delhi, New Age International, 2006. 656 p. 17. Narkhede H.P. Review of image segmentation techniques. International Journal of Science and Modern Engineering , 2013, vol. 1 (8), pp. 54–61. 18. Celebi M.E., Kingravi H.A., Vela P.A. A comparative study of ef fi cient initialization methods for the k-means clustering algorithm. Expert systems with applications , 2013, vol. 40 (1), pp. 200–210. 19. Kodinariya T.M., Makwana P.R. Review on determining number of Cluster in K-Means Clustering. International Journal of Advance Research in Computer Science and Management Studies , 2013, vol. 1 (6), pp. 90–95. 20. Likas A., Vlassis N., Verbeek J.J. The global k-means clustering algorithm. Pattern Recognition , 2003, vol. 3 6 (2), pp. 451–461. 21. Vermunt J.K. K-means may perform as well as mixture model clustering but may also be much worse: Comment on Steinley and Brusco. Psychological Methods , 2011, vol. 16, no. 1, pp. 82–88. 22. Sheladiya M.V., Acharya S.G., Acharya G.D. Technological investigation of effect of machining parameter on tool life. Obrabotka metallov (tekhnologiya, oborudovanie, instrumenty) = Metal Working and Material Science , 2020, vol. 22, no. 4, pp. 41–53. DOI: 10.17212/1994-6309-2020-22.4-41-53. (In Russian). 23. Moore W., Lord J.O. Gray cast iron machinability: quantitative measurements of graphite and pearlite effects. Modern Castings , 1959, vol. 35 (4), pp. 55–60. Con fl icts of Interest The authors declare no con fl ict of interest. 2021 The Authors. Published by Novosibirsk State Technical University. This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/ ).
Made with FlippingBook
RkJQdWJsaXNoZXIy MTk0ODM1