A. Bastys "Introduction to pattern recognition"
Catalog description:
Pattern recognition, clustering, feature extraction,
neural networks, genetic algorithms.
Current Text:
A. Bastys, Atpažinimo teorijos elementai,
Vilniaus universiteto leidykla, 1997.
Additional Reference:
John A. Richards,
Remote sensing digital Image Analysis,
Springer-Verlang, 1995.
Goals:
The students should learn the main components of
patterns recognition theory -
feature extraction, dimensionality
reduction, supervised and unsupervised classification.
They should also be able to solve by computer some practical problems connected
with optical text and speech recognition.
Content:
- Human visual and audio systems.
- The Maars' vision theory.
- Optical characters and speech recognition problems.
- Signal processing for patterns recognition.
- Clustering and unsupervized classification.
- Supervised classification techniques.
- Feature extraction and reduction.
- Application of neural networks for patterns recognition.
- Genetic algorithms.
Required Background:
Course of mathematical analysis, linear algebra,
digital signal processing, programming.
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