Biomedical Engineering Reference
In-Depth Information
62. Chung CH, Cheng SC, Chang CC (2010) Adaptive image segmentation for region-based
object retrieval using generalized Hough transform. Pattern Recogn 43:3219-3232
63. Xu X, Zhou Y, Cheng X, Song E, Li G (2012) Ultrasound intima-media segmentation using
Hough transform and dual snake model. Comput Med Imaging Graph 36:248-258
64. Kassim AA, Tan T, Tan KH (1999) A comparative study of efficient generalised Hough
transform techniques. Image Vis Comput 17:737-748
65. Shapiro V A (1996) On the hough transform of multi-level pictures. Pattern Recogn
29:589-602
66. Hart PE (2009) How the Hough transform was invented [DSP History]. IEEE Signal
Processing Magazine 26:18-22
67. Ji J, Chen G, Sun L (2011) A novel Hough transform method for line detection by enhanc-
ing accumulator array. Pattern Recogn Lett 32:1503-1510
68. Zheng L, Shi D (2011) Advanced Radon transform using generalized interpolated Fourier
method for straight line detection. Comput Vis Image Underst 115:152-160
69. Illingworth J, Kittler J (1987) The Adaptive Hough Transform. IEEE Trans Pattern Anal
Mach Intell 9:690-698
70. Nixon M (1990) Improving an extended version of the Hough transform. Signal Processing
19:321-335
71. Kiryati N, Eldar Y, Bruckstein AM (1991) A probabilistic Hough transform. Pattern recogni-
tion 24:303-316
72. Hanif T, Sandler MB (1994) A counter-based Hough transform system. Microprocess
Microsyst 18:19-26
73. Torii A, Imiya A (2007) The randomized-Hough-transform-based method for great-circle
detection on sphere. Pattern Recogn Lett 28:1186-1192
74. Ballard DH (1981) Generalizing the Hough transform to detect arbitrary shapes. Pattern
Recogn 13:111-122
75. Lo RC, Tsai WH (1995) Gray-scale hough transform for thick line detection in gray-scale
images. Pattern Recogn 28:647-661
76. Kang CC, Wang WJ, Kang CH (2012) Image segmentation with complicated back-
ground by using seeded region growing. AEU—International Journal of Electronics and
Communications 66:767-771
77. Fan J, Zeng G, Body M, Hacid M-S (2005) Seeded region growing: an extensive and com-
parative study. Pattern Recogn Lett 26:1139-1156
78. Grinias I, Tziritas G (2001) A semi-automatic seeded region growing algorithm for video
object localization and tracking. Sig Process: Image Commun 16:977-986
79. Lin GC, Wang WJ, Kang CC, Wang CM (2012) Multispectral MR images segmentation
based on fuzzy knowledge and modified seeded region growing. Magn Reson Imaging
30:230-246
80. Mehnert A, Jackway P (1997) An improved seeded region growing algorithm. Pattern
Recogn Lett 18:1065-1071
81. Tremeau A, Borel N (1997) A region growing and merging algorithm to color segmentation.
Pattern Recogn 30:1191-1203
82. Digabel H, Lantuéjou C (1978) Iterative algorithms. In: Actes du Second Symposium
Europeen d'Analyse Quantitative des Microstructures en Sciences des Materiaux, Biologie
et Medecine. pp 4-7 Caen
83. Beucher S and Lantuejoul C (1979) Use of Watersheds in Contour Detection. In:
International workshop on image processing: Real-time edge and motion detection/estima-
tion, Rennes, France
84. Vincent L, Soille P (1991) Watersheds in digital spaces: an efficient algorithm based on
immersion simulations. IEEE Trans Pattern Anal Mach Intell 13:583-598
85. Cousty J, Bertrand G, Najman L, Couprie M (2010) Watershed cuts: thinnings, shortest path
forests, and topological watersheds. IEEE Trans Pattern Anal Mach Intell 32:925-939
Search WWH ::




Custom Search