Have a personal or library account? Click to login

Analysis and Design of Image Segmentation Algorithm Based on Super-pixel and Graph Cut

By:
Feng Xiao and  Hao Sun  
Open Access
|Oct 2019

References

  1. Greig D, Porteous B, Seheult A. Exact maximum a posteriori estimation for binary images[J].J.Royal Statistical Soc., Series B, 1989,51(2):271-2279
  2. Boykov Y Y, Jolly M. Interactive graph cut for optimal boundary & region segmentation of objects in N-D images[C], Proceedings of Internation Conference on Computer Vision. Vancouver, Cannada: IEEE Computer Society, 2001, I: 105-112
  3. Boykov Y, Kolmogorov V. An experimental comparison of min-cut/max flow algorithms for energy minimization in vision[J]. IEEE Transactions on Pattern Analysis and Machine Intelligen-ce, 2004, 26(9): 1124-1137
  4. ROTHER C. KOLMOGOROV V. BLAKE A. GrabCut: interactive foregroud extraction using iterated graph cuts [J]. ACM Transactions on Graphics (TOC), 2004,23(3),309-314.
  5. Qiang Nan. Image Segmentation Algorithm Based on Morphological Watershed and Spectral Clustering [D]. Chang'an University, 2014.
  6. Zhang Jiashu, Li Beichuan. Research on Two-Dimensional Maximum Entropy Threshold Segmentation of Gray Image[J].Journal of Southwest China Normal University(Natural Science), 1995,(06):643-647.
  7. Xi Jing. Remote Sensing Image Edge Detection and Its Application in Channel GIS [D]. Southeast University, 2006.
  8. Wu Jian. Research and application of motion human detection and tracking in video sequences [D]. Lanzhou Institute of Technology, 2010.
  9. Meng Jie, Cheng Yongqiang. Application of Image Location and Segmentation in Vehicle License Plate Recognition[J]. Information Communication, 2015,(09):159-160.
  10. Tang Xiaojing. Color vector error diffusion algorithm based on edge detection[J]. Science and Technology Information, 2009, (35):482-483
  11. Guo Zhenfeng. Interactive Image Segmentation Based on Graph Cuts [D]. Central South University, 2013.
  12. Cao Jiannong, FANG Danxia. Image Segmentation Method Based on Graph Theory and Its Limitations[J]. Surveying and Mapping Techniques, 2006, (02)
  13. Wang Chunyao, CHEN Junzhou, LI Wei. Review of research on superpixel segmentation algorithm[J]. Journal of Computer Applications, 2014, (01): 6-12.
  14. Yin Li,JianSun,Chi-keung Tang and Heung-Yeung Shum. Lazy Snapping.ICCV 2004
  15. Li Xuchao, Zhu Shanan. A Survey of Markov Random Field Methods in Image Segmentation[J]. Journal of Image and Graphics, 2007, (05): 789-798.
  16. Xu Huanhuan. Research on image segmentation method based on energy function[D]. University of Science and Technology of China, 2009.
  17. Xu Qiuping. Research on target extraction method based on graph cut theory [D]. Shaanxi Normal University, 2009.
  18. Wang Yarong. Research on interactive image segmentation based on graph cut[D]. Northwest University, 2011.
  19. Automatic Segmentation of Magnetic Resonance Brain Image Based on Watershed Algorithm[J]. SONG Liwei, SONG Chaoyu, ZHUANG Tiange. Journal of Shanghai Jiaotong University. 2003(11)
  20. Song Yutan, JI Xiu. Research on Binary Image Segmentation Algorithm Based on Mathematical Morphology[J]. Journal of Changchun Institute of Technology (Natural Science Edition), 2008, (3): 68-70.
  21. Xu Huanhuan. Research on image segmentation method based on energy function[D]. University of Science and Technology of China, 2009.
  22. Shi Dianguo. Gray Image Segmentation Based on Graph Theory[D]. Wuhan University of Technology, 2009.
  23. LI Minguang,DENG Kazhong,ZHAO Yin. Remote Sensing Image Segmentation Based on Improved Watershed Transform[J]. Remote Sensing Information, 2009,(06):3-6.
  24. Liu Chen. Application of Filtering Preprocessing in Watershed Segmentation Algorithm[J]. Journal of Kashgar Teachers, 2014, (06): 45-49
  25. Zhang Xiaolong. Small class division of forest resources survey based on high spatial resolution remote sensing image[D]. Xi'an University of Science and Technology, 2010.
  26. Liu Huan, Zhang Mei, Peng Xingxing. Research on color image segmentation based on edge detection and region growing[J]. China New Communication, 2016, (11):153-154.
  27. Wang Kang. Improvement of k-means clustering algorithm and its application [D]. Dalian University of Technology, 2014.
Language: English
Page range: 25 - 30
Published on: Oct 14, 2019
Published by: Xi’an Technological University
In partnership with: Paradigm Publishing Services
Publication frequency: 4 issues per year

© 2019 Feng Xiao, Hao Sun, published by Xi’an Technological University
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 License.