Image Processing Reference
In-Depth Information
17. Ammann, C., Sartori Angus, A.: Fast thinning algorithm for binary images. Image Vi-
sion and Computing 3(2), 71-79 (1985)
18. Andreadis, I., Illiades, P., Karafyllidis, Y., Tsalides, P., Thanailakis, A.: Design and
VLSI implementation of a new ASIC for colour measurement. IEE Proceedings - Cir-
cuits, Devices and Systems 142(3), 153-157 (1995)
19. Andreadis, I., Karafyllidis, I., Tzionas, P., Thanailakis, A., Tsalides, P.: A new hardware
system for automated visual inspection based on a cellular automaton architecture. J.
Intellig. Robot. Sys. 16, 89-102 (1996)
20. Anoop, S., Alakkaran, A.: A full image encryption scheme based on transform domains
and stream ciphers. International Journal of Advanced Information Science and Tech-
nology 17(17), 5-10 (2013)
21. Antnio, G.C.: Spatial analysis and GIS: A primer,
citeseer.ist.psu.edu/696989.html
22. Arata, H., Takai, Y., Takai, N.K., Yamamoto, T.: Free-form shape modeling by 3D cel-
lular automata. In: International Conference on Shape Modeling and Applications, pp.
242-247. IEEE Computer Society (1999)
23. Arcelli, C., di Baja, G.S.: Euclidean skeleton via centre-of-maximal-disc extraction.
Image and Vision Computing 11(3), 163-173 (1993)
24. Ashley, R.: Spore at the cellular level,
http://www.1up.com/features/spore-cellular-level
(accessed November 2013)
25. Atken, M.: MSA fluid demos (2009), http://www.memo.tv
26. Attali, D., Boissonnat, J.D., Edelsbrunner, H.: Stability and Computation of Medial
Axes - a State-of-the-Art Report. In: Mathematical Foundations of Scientific Visualiza-
tion, Computer Graphics, and Massive Data Exploration, vol. 6, pp. 109-125. Springer,
Heidelberg (2009)
27. Aupetit, M., Catz, T.: High-dimensional labeled data analysis with topology represent-
ing graphs. Neurocomputing 63, 139-169 (2005)
28. Aurenhammer, F.: Voronoi diagrams - a survey of a fundamental geometric data struc-
ture. ACM Comput. Surv. 23(3), 345-405 (1991)
29. Avidan, S., Shamir, A.: Seam carving for content-aware image resizing. ACM Trans.
Graph. 26(3), 10 (2007)
30. Aydinli, S., Seidl, M.: Determination of the economic benefits of daylight in interiors
concerned with the fulfillment of visual tasks. In: Adepski, M., McCluney, R. (eds.) Pro-
ceedings I: 1986 International Daylighting Conference, Long Beach California USA,
pp. 145-151 (1986)
31. Baas, N.A., Torbjorn, H.: Higher Order Cellular Automata. Advances in Complex Sys-
tems 8(2-3), 169-192 (2005)
32. Babcock, J.: Cellular automata method for generating random cave-like levels (2005),
http://roguebasin.roguelikedevelopment.org
33. Bachrach, J., Beal, J., Horowitz, J., Qumsiyeh, D.: Empirical characterization of dis-
cretization error in gradient-based algorithms. In: SASO 2008: Proceedings of the 2008
Second IEEE International Conference on Self-Adaptive and Self-Organizing Systems,
pp. 203-212. IEEE Computer Society, Washington, DC (2008)
34. Bastürk, A., Günay, E.: Efficient edge detection in digital images using a cellular neural
network optimized by differential evolution algorithm. Expert Syst. Appl. 36(2), 2645-
2650 (2009)
35. Baggio, D.L., Emami, S., Escrivá, D.M., Ievgen, K., Mahmood, N., Saragih, J.,
Shilkrot, R.: Mastering OpenCV with practical computer vision projects (2012)
 
Search WWH ::




Custom Search