2,191
Views
8
CrossRef citations to date
0
Altmetric
Research Article

A novel technique for analysing histogram equalized medical images using superpixels

&

References

  • Celik T, Tjahjadi T. Automatic image equalization and contrast enhancement using gaussian mixture modeling. IEEE Trans Image Process. 2012;21:145.
  • Lee E, Kim S, Kang W, et al. Contrast enhancement using dominant brightness level analysis and adaptive intensity transformation for remote sensing images. IEEE Geosci Remote Sensing Lett. 2013;10:62–66.
  • Huang SC, Cheng FC, Chiu YS. Efficient contrast enhancement using adaptive gamma correction with weighting distribution. IEEE Trans Image Process. 2013;22:1032–1041.
  • Zanaty EA, Afifi A. A watershed approach for improving medical image segmentation. Comp Methods Biomech Biomed Eng. 2013;16:1262–1272.
  • Patil DV, Mulla A, Chougale SB. Medical Image Enhancement Using GMM: A Histogram approach. Paper presented at: International Journal of Scientific and Research Publications (IJSRP), 2015(5), Issue 12.
  • Chen X, Zhang F, Zhang R. Medical image segmentation based on SLIC superpixels model[J]. Proceedings of the SPIE. 2017;245:1024502.
  • Criminisi A. Machine learning for medical images analysis. Med Image Anal. 2016;33:91–93.
  • Baxter J, Gibson E, Eagleson R, et al. The semiotics of medical image segmentation. Med Image Anal. 2018;44:54–71.
  • Bruijne MD. Machine learning approaches in medical image analysis: from detection to diagnosis. Med Image Anal. 2016;33:94–97.
  • Goceri E, Goceri N. Deep Learning in Medical Image Analysis: Recent Advences and Future Trends. Paper Present at: International Conferences Computer Graphics, Visualization, Computer Vision and Image Processing. 2017. Lisbon, Portugal, 305–310.
  • Dora L, Agrawal S, Panda R, et al. State of the art methods for brain tissue segmentation: a review. IEEE Rev Biomed Eng. 2017;99:1–91.
  • Smistad E, Falch TL, Bozorgi M, et al. Medical image segmentation on GPUs-a comprehensive review. Med Image Anal. 2015;20:1–18.
  • Menotti D, Najman L, Facon J, et al. Multi-histogram equalization methods for contrast enhancement and brightness preserving. IEEE Trans Consumer Electron. 2007;53:1186–1194.
  • Wang Q, Ward RK. Fast image/video contrast enhancement based on weighted thresholded histogram equalization. IEEE Trans Consumer Electron. 2007;53:757–764.
  • Chen SD, Ramli AR. Contrast enhancement using recursive mean-separate histogram equalization for scalable brightness preservation. IEEE Trans Consumer Electron. 2003;49:1301–1309.
  • Wang C, Ye Z. Brightness preserving histogram equalization with maximum entropy: a variational perspective. IEEE Trans Consumer Electron. 2005;51:1326–1334.
  • Pizer SM, Amburn EP, Austin JD, et al. Adaptive histogram equalization and its variations. Comp Vision Graphics Image Proc. 1987;39:355–368.
  • Kong N. A literature review on histogram equalization and its variations for digital image enhancement. Int J Innovation Management Technol. 2013;386–389.
  • Gonzalez RC, Woods RE. Digital image processing. 2nd ed. Boston, MA, USA: Prentice-Hall of India; 2002.
  • Kim JY, Kim LS, Hwang SH. An advanced contrast enhancement using partially overlapped sub-block histogram equalization. IEEE Trans Circ Sys Video Technol. 2001;11:475–484.
  • Lamberti F, Montrucchio B, Sanna A. CMBFHE: a novel contrast enhancement technique based on cascaded multistep binomial filtering histogram equalization. IEEE Trans Consumer Electron. 2006;52:966–974.
  • Liu HD, Yang M, Gao Y, et al. Fast local histogram specification. IEEE Trans Circuits Syst Video Technol. 2014;24:1833–1843.
  • Saffarian N, Zou JJ. DNA microarray image enhancement using conditional sub-block bi-histogram equalization. Paper presented at: IEEE International Conference on Video & Signal Based Surveillance. IEEE Computer Soc. 2006;86.
  • Belaid LJ, Mourou W. Image segmention: a watershed transformation algorithm. Image Anal Stereol. 2011;28:93–102.
  • Levinshtein A, Dickinson S, Sminchisescu C. Multiscale symmetric part detection and grouping. Paper presented at: International Conference on Computer Vision. IEEE 2010;104:2162–2169.
  • Fulkerson B, Vedaldi A, Soatto S. Class segmentation and object localization with superpixel neighborhoods. Paper presented at: International Conference on Computer Vision. IEEE, 2009:670–677.
  • Mori G. Guiding model search using segmentation. Paper presented at: International Conference on Computer Vision. IEEE 2005;1417–1423.
  • Achanta R, Shaji A, Smith K, et al. SLIC superpixels compared to state-of-the-art superpixel methods. IEEE Trans Pattern Anal Mach Intell. 2012;34:2274–2282.
  • Felzenszwalb PF, Huttenlocher DP. Efficient graph-based image segmentation. Int J Comput Vis. 2004;59:167–181.
  • Vincent L, Soille P. Watersheds in digital spaces: an efficient algorithm based on immersion simulations. IEEE Trans Pattern Anal Machine Intell. 1991;13:583–598.
  • Körbes A, Vitor GB, Ferreira JV, et al. A Proposal for a Parallel Watershed Transform Algorithm for Real-Time Segmentation. Paper presented at: WVC’2009.
  • Ren X, Malik J. Learning a classification model for segmentation. Paper presented at: International Conference on Computer Vision. IEEE 2003;10–17.