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The course broadens topics of the image processing course NPGR002: Digital Image Processing and it is aimed
for students eager to gain deeper knowledge in the field. The majority of image processing tasks can be
formulated as a variational problem. We give an introduction to the calculus of variations and numerical methods
solving optimization problems. Then we focus on problems from image processing, which one can formulate as
an optimization problem and we illustrate possible solutions on a wide variety of practical applications.
Last update: Holan Tomáš, RNDr., Ph.D. (30.04.2019)
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Last update: Šroubek Filip, doc. Ing., Ph.D., DSc. (10.06.2018)
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[1] Mathematical problems in image processing, G. Aubert and P. Kornprobst, Springer, 2002. [2] Matrix Computations, Gene H. Golub, Charles F. Van Loan, Johns Hopkins University Press. [3] Blind Image Deconvolution, Ed. P. Campisi, K. Egiazarian, CRC Press, 2008. [4] Practical Optimization: Algorithms and Engineering Applications, Andreas Antoniou and Wu-Sheng Lu, 2007. [5] Pattern Recognition and Machine Learning, Christopher M. Bishop, Springer, 2006. Last update: Šroubek Filip, doc. Ing., Ph.D., DSc. (14.02.2024)
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More information (study materials, exams, diploma thesis) is available at NPGR029 Last update: Šroubek Filip, doc. Ing., Ph.D., DSc. (14.02.2024)
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