Table of Contents

XP33ROD - Rozpoznávání pro doktorandy (Pattern Recognition for PhD students)

Introduction, subject goals, eligibility

The subject introduces pattern recognition (called also machine learning). The subject is intended for doctoral students. I can take master students after an initial interview about student's motivation as well. The lectures are open to bachelor students but no credit for the subject will be awarded.

It is expected that student did not study this subject before, e.g. in the bachelor subject Rozpoznávání a strojové učení, B4M33RPZ, B4M33RPZ lectured by Prof. Jiří Matas. The lecturer will ask the student if she/he did not pass a similar subject to avoid getting credits easily.

The subject comprises of lectures and consultations with the lecturer (if the student asks for it).

Expected preliminary knowledge

It is required that the student passed an introductory course of the probability theory and statistics or studied this area individually.

Lectures

Week Date Time Who Content
0116.02.202209:15 VH Outline of pattern recognition, Intro to pattern recognition
0223.02.202209:15 VH Rehearsal of the basic knowledge from probability theory and statistics. Probability En. Bayesian task and its two special cases, Bayesian task
0302.03.202209:15 VH Non-Bayesian tasks, formulations only. Conditional independence of features. Gaussian models. Non-bayesian tasks, Two statistical models.
0409.03.202209:15 Artificial neural networks. slides
0516.03.202209:15 VH Estimation of probabilistic models. Parametric and nonparametric methods. parametric, nonparametric
0623.03.202209:15 Convolutional neural networks. slides
0730.03.202209:15 VH Data normalization. Experimental evaluation of classifiers. Receiver operator curve (ROC). Experimental classifier performance evaluation
0806.04.202209:15 VH Learning in pattern recognition. VC dimension and its use. Learning in Pattern Recognition, four formulations, VC learning theory
0913.04.202209:15 VH Linear classifiers. Perceptron. Learning (training) algorithm. Linear classifiers. Perceptron.
xx20.04.2022 No lecture because two of four students could not come.
1027.04.202209:15 VH Support vector machines classifiers (SVM). Kernel methods. Training algorithms for SVM Linear SVM , Kernel SVMs
114.05.202209:15 VH Unsupervised learning. K-means algorithm. EM algorithm. Unsupervised learning
1211.05.202209:15 VH Markovian models in pattern recognition. Markovian pattern recognition methods
1318.05.202209:15 Reinforcement learning. slides
1424.05.202209:15 VH Structural pattern recognition

Examination and its evaluation

Literature