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        Lecturer(s)
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                    Škorňa Stanislav, Mgr.
                
 
            
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                    Burkotová Jana, Mgr. Ph.D.
                
 
            
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                    Machalová Jitka, doc. RNDr. Ph.D., MBA
                
 
            
         
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        Course content
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        1. Polynomial splines. 2. B-splines and their basic properties. 3. Spline interpolation. 4. Splines in least square problem.  5. Smoothing splines. 6. Tensor product splines. 7. Periodic and non-periodic discrete splines. 8. Spline-wavelets. 9. Discrete splines in image and signal processing. 
         
         
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        Learning activities and teaching methods
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        Lecture, Dialogic Lecture (Discussion, Dialog, Brainstorming), Demonstration
        
        
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                Learning outcomes
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                Gain knowledge about approximation of data by using splines.
                 
                Knowledge Gain useful knowledge about approximation of data by using splines. 
                 
                
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                Prerequisites
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                Standard knowledge from mathematical analysis, linear algebra and numerical methods.  
                
                
                    
                        
                    
                    
                
                
  
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                Assessment methods and criteria
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                        Oral exam, Seminar Work
                        
                        
                         
                        
                    
                    
                
                 Credit: the student has to compute assigned examples. Exam: the student has to understand the subject and be acquainted with theory and computational methods.
                 
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        Recommended literature
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                    C. de Boor. (1978). A Practical Guide to Splines. Springer, New York. 
                
 
            
                
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                    Ch. Gu. (2013). Smoothing spline ANOVA Models. Springer. 
                
 
            
                
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                    J. Kobza. (1993). Splajny. skriptum UP, Olomouc. 
                
 
            
                
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                    K. Najzar. (2006). Základní teorie splinů. skriptum UK, Praha. 
                
 
            
                
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                    P. Dierckx. (1995). Curve and Surface Fitting with Splines. Oxford University Press, New York. 
                
 
            
         
         
         
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