Colour Correlation-based Matching

S. Chambon and A. Crouzil

References

  1. [1] D. Scharstein & R. Szeliski, A taxomomy and evaluation ofdense two-frame stereo correspondence algorithms, International Journal of Computer Vision, 47(1), 2002, 7–42. doi:10.1023/A:1014573219977
  2. [2] M.Z. Brown, D. Burschka, & G.D. Hager, Advances in computational stereo, IEEE Trans. on Pattern Analysis and Machine Intelligence, 25(8), 2003, 993–1008. doi:10.1109/TPAMI.2003.1217603
  3. [3] P. Aschwanden & W. Guggenb¨ul, Experimental results from acomparative study on correlation type registration algorithms,in Förstner & Ruwiedel (Eds), Robust computer vision: quality of vision algorithms (Wichmann, Karlsruhe, Germany, March 1992), 268–282.
  4. [4] S. Chambon & A. Crouzil, Dense matching using correlation:new measures that are robust near occlusions, in BritishMachine Vision Conference, Norwich, Great Britain, Vol. 1,September 2003, 143–152.
  5. [5] R. Garcia, X. Cufi, & J. Batle, Detection of matching in asequence of underwater images through texture analysis, inIEEE Int. Conf. on Image Processing, Thessaloniki, Greece,Vol. 1, October 2001, 361–364.
  6. [6] M. Okutomi & G. Tomita, Color stereo matching and itsapplication to 3-D measurement of optic nerve head, in Int.Conf. on Pattern Recognition, Hague, The Netherlands, Vol. 1,September 1992, 509–513.
  7. [7] A. Koschan, Dense stereo correspondence using polychromaticblock matching, Computer Analysis of Images and Patterns,Budapest, Hungary, Vol. 719 of Lecture Notes in ComputerScience, September 1993, 538–542.
  8. [8] H. Mayer, Analysis of means to improve cooperative disparityestimation, ISPRS Conf. on Photogrammetric Image Analysis,Technical university of Munich, Germany, September 2003.
  9. [9] J.-P. Braquelaire & L. Brun, Comparison and optimization ofmethods of color image quantization, IEEE Trans. on ImageProcessing, 6(7), 1997, 1048–1052. doi:10.1109/83.597280
  10. [10] P. Lambert & T. Carron, Symbolic fusion of luminance-hue-chroma features for region segmentation, Pattern Recognition,32(11), 1999, 1857–1872. doi:10.1016/S0031-3203(99)00010-2
  11. [11] G. Sharma & H.J. Trusell, Digital color imaging, IEEE Trans.on Image Processing, 6(7), 1997, 901–932. doi:10.1109/83.597268
  12. [12] N. Vandenbroucke, L. Macaire, & J.-G. Postaire, Color systems coding for color image processing, Int. Conf. on Color inGraphics and Image Processing, Saint-Étienne, France, October 2000, 180–185.
  13. [13] M.J. Swain & D.H. Ballard, Color indexing, InternationalJournal of Computer Vision, 7(1), 1991, 11–32. doi:10.1007/BF00130487
  14. [14] Y.-I. Ohta, T. Kanade, & T. Sakai, Color information for region segmentation, Computer Graphics and Image Processing,13(3), 1980, 222–241. doi:10.1016/0146-664X(80)90047-7
  15. [15] T. Belli, M. Cord, & S. Philipp-Foliguet, Color contributionfor stereo image matching, Int. Conf. on Color in Graphicsand Image Processing, Saint-Étienne, France, October 2000,317–322.
  16. [16] S.-C. Cheng & S.-C. Hsia, Fast algorithms for color imageprocessing by principal component analysis, Visual Communication and Image Representation, 14(2), 2003, 184–203. doi:10.1016/S1047-3203(03)00024-5
  17. [17] J. Chanussot & P. Lambert, Bit mixing paradigm for multi-valued morphological filters, Int. Conf. on Image Processingand its Applications, Dublin, Ireland, 1997, 804–808. doi:10.1049/cp:19971007
  18. [18] H.-C. Lee & D.R. Cok, Detecting boundaries in a vector field,IEEE Trans. on Signal Processing, 39(5), 1991, 1181–1194. doi:10.1109/78.80971
  19. [19] W.K. Pratt, Digital image processing (Wiley-Interscience Publication, New-York, 1978), Chapter 20, 666–667.
  20. [20] D.N. Bhat & S.K. Nayar, Ordinal measures for image correspondence, IEEE Trans. on Pattern Analysis and MachinebIntelligence, 20(4), 1998, 415–423. doi:10.1109/34.677275
  21. [21] S. Kaneko, Y. Satoh, & S. Igarashi, Using selective correlationcoefficient for robust image registration, Pattern Recognition,36(5), 2003, 1165–1173. doi:10.1016/S0031-3203(02)00081-X
  22. [22] R. Zabih & J. Woodfill, Non-parametric local transforms forcomputing visual correspondence, European Conf. on Computer Vision, Stockholm, Sweden, 1994, 151–158.
  23. [23] A. Koschan, Using perceptual attributes to obtain dense depth maps, IEEE Southwest Symp. on Image Analysis and Interpretation, San Antonio, Texas, April 1996, 155-159. doi:10.1109/IAI.1996.493745

Important Links:

Go Back