Image Processing Reference
In-Depth Information
2. Altuwaijri, M., Bayoumi, M.: A new thinning algorithm for Arabic characters using self-
organizing neural network. In: 1995 IEEE International Symposium on Circuits and Sys-
tems, ISCAS 1995, vol. 3, pp. 1824-1827 (1995)
3. Ammann, C., Sartori Angus, A.: Fast thinning algorithm for binary images. Image Vision
and Computing 3(2), 71-79 (1985)
4. Arcelli, C., di Baja, G.S.: Euclidean skeleton via centre-of-maximal-disc extraction. Im-
age and Vision Computing 11(3), 163-173 (1993)
5. Attali, D., Boissonnat, J.D., Edelsbrunner, H.: Stability and Computation of Medial Axes
- a State-of-the-Art Report. In: Mathematical Foundations of Scientific Visualization,
Computer Graphics, and Massive Data Exploration, ch. 6, pp. 109-125. Springer, Hei-
delberg (2009)
6. di Baja, G.S., Thiel, E.: Skeletonization algorithm running on path-based distance maps.
Image and Vision Computing 14(1), 47-57 (1996)
7. Baruch, O.: Line thinning by line following. Pattern Recognition Letters 8(4), 271-276
(1988)
8. Betel, H., Flocchini, P.: On the relationship between fuzzy and boolean cellular automata.
Theoretical Computer Science 412(8-10), 703-713 (2011)
9. Biasotti, S., Attali, D., Boissonnat, J.D., Edelsbrunner, H., Elber, G., Mortara, M., Baja,
G.S., Spagnuolo, M., Tanase, M., Veltkamp, R.: Skeletal structures. In: Floriani, L.,
Spagnuolo, M. (eds.) Shape Analysis and Structuring, Mathematics and Visualization,
pp. 145-183. Springer, Heidelberg (2008)
10. Blum, H.: An associative machine for dealing with the visual field and some of its bi-
ological implications. In: Bernard, E.E., Kare, M.R. (eds.) Biological Prototypes and
Synthetic Systems, vol. 1, pp. 244-260. Plenum Press, New York (1962), Proceedings of
the 2nd Annual Bionics Symposium, held at Cornell University (1961)
11. Blum, H.: An associative machine for dealing with the visual field and some of its bi-
ological implications. In: Computer and Mathematical Sciences Laboratory, Electronics
Research Directorate, Air Force Cambridge Research Laboratories, Office of Aerospace
Research. United States Air Force (1962)
12. Cattaneo, G., Dennunzio, A., Margara, L.: Solution of some conjectures about topologi-
cal properties of linear cellular automata. Theoretical Computer Science 325(2), 249-271
(2004), Theoretical Aspects of Cellular Automata
13. Chauhan, S.: Survey paper on training of cellular automata for image. International Jour-
nal of Engineering and Computer Science 2(4), 980-985 (2013)
14. Chen, Y.S.: The use of hidden deletable pixel detection to obtain bias-reduced skele-
tons in parallel thinning. In: Proceedings of the 13th International Conference on Pattern
Recognition, vol. 2, pp. 91-95. IEEE Computer Society, Washington, DC (1996)
15. Chen, Y.S., Hsu, W.H.: Systematic approach for designing 2-subcycle and pseudo 1-
subcycle parallel thinning algorithms. Pattern Recognition 22(3), 267-282 (1989)
16. Dinneen, G.P.: Programming pattern recognition. In: Proceedings of the Western Joint
Computer Conference, AFIPS 1955 (Western), pp. 94-100. ACM, New York (1955)
17. Dufresne, T.E., Sarwal, A., Dhawan, A.P.: A gray-level thinning method for delineation
and representation of arteries. Computerized Medical Imaging and Graphics 18(5), 343-
355 (1994)
18. Favre, A., Keller, H.: Parallel syntactic thinning by recoding of binary pictures. Computer
Vision, Graphics, and Image Processing 23(1), 99-112 (1983)
19. Gil Montoya, M., Garcia, I.: Implementation of parallel thinning algorithms on multi-
computers: analysis of the work load balance. In: Proceedings of the Sixth Euromicro
Workshop on Parallel and Distributed Processing, PDP 1998, pp. 257-263 (1998)
20. González, R.C., Woods, R.E.: Digital image processing. Pearson/Prentice Hall (2008)
Search WWH ::




Custom Search