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| Dept. of Computer Sc. » Pattern Recognition » Courses » WS 19/20 » Introduction to Pattern Recognition [IntroPR]  Introduction to Pattern Recognition [IntroPR]Summary 
						The goal of this lecture is to familiarize the students with the overall 
pipeline of a Pattern Recognition System. The various steps involved from 
data capture to pattern classification are presented. The lectures start 
with a short introduction, where the nomenclature is defined. Analog to 
digital conversion is briefly discussed with a focus on how it impacts 
further signal analysis. Commonly used preprocessing methods are then 
described. A key component of Pattern Recognition is feature extraction. 
Thus, several techniques for feature computation will be presented including 
Walsh Transform, Haar Transform, Linear Predictive Coding, Wavelets, 
Moments, Principal Component Analysis and Linear Discriminant  Analysis. The 
lectures conclude with a basic introduction to classification. The 
principles of statistical, distribution-free and nonparametric 
classification approaches will be presented. Within this context we  will 
cover Bayesian and Gaussian classifiers, as well as artificial neural 
networks. The accompanying exercises will provide further details on  the 
methods and procedures presented in this lecture with particular  emphasis on 
their application. Dates & Rooms: Tuesday, 12:15 - 13:45; Room: H4 Wednesday, 8:15 - 9:45; Room: H4 Lecturer | ||