Pattern recognition
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Teaching
Details
Faculty Faculty of Science and Medicine Domain Computer Science Code UE-SIN.08608 Languages English Type of lesson Lecture
Level Master Semester SS-2023 Schedules and rooms
Summary schedule Monday 14:15 - 17:00, Hebdomadaire (Spring semester)
Struct. of the schedule 3h par semaine durant 14 semaines Contact's hours 42 Teaching
Responsibles - Ingold Rolf
Teachers - Fischer Andreas
Description In this course, we study the fundaments of pattern recognition. We adopt an engineering point of view on the development of intelligent machines which are able to identify patterns in data. The core methods and algorithms are elaborated that enable pattern recognition for a wide range of data sources including sensory data (image, video, audio, location, etc.) as well as born-digital data (text, network traffic, chemical formulas, etc.). The course is organized in two parts. In the first part, we explore statistical pattern recognition based on feature vector representation. Standard methods for unsupervised clustering and supervised classification in vector spaces will be discussed. In the second part, we investigate structural pattern recognition based on string and graph representation. For clustering and classification of structural data, dissimilarity measures will be introduced alongside with explicit and implicit vector space embedding approaches. The course is accompanied by practical exercises that involve the implementation of algorithms discussed in class and their application to exemplary pattern recognition tasks. Training objectives On successful completion of this class, you will be able to:
- Design pattern recognition systems for a large variety of data sources, namely to cluster and classify objects represented as feature vectors, feature vector sequences, strings, and graphs.
- Describe the mathematical techniques, assumptions, and relevant parameters of the underlying recognition algorithms, including k-means clustering, Bayes classification, support vector machines, neural networks, hidden Markov models, graph edit distance, and graph kernel functions.
- Apply the pattern recognition systems to exemplary recognition tasks ranging from image recognition over movement analysis to the classification of molecular compounds.Comments MSc-CS BENEFRI - (Code Ue: 33082 / Track: T3; Code Ue: 63082 / Track: T6) The exact date and time of this course as well as the complete course list can be found at http://mcs.unibnf.ch/.
Course and exam registration on ACADEMIA (not myunifr.ch). Please follow the instructions on https://mcs.unibnf.ch/organization/
Softskills No Off field No BeNeFri Yes Mobility Yes UniPop No -
Dates and rooms
Date Hour Type of lesson Place 20.02.2023 14:15 - 17:00 Cours PER 21, Room C230 27.02.2023 14:15 - 17:00 Cours PER 21, Room C230 06.03.2023 14:15 - 17:00 Cours PER 21, Room C230 13.03.2023 14:15 - 17:00 Cours PER 21, Room C230 20.03.2023 14:15 - 17:00 Cours PER 21, Room C230 27.03.2023 14:15 - 17:00 Cours PER 21, Room C230 03.04.2023 14:15 - 17:00 Cours PER 21, Room C230 17.04.2023 14:15 - 17:00 Cours PER 21, Room C230 24.04.2023 14:15 - 17:00 Cours PER 21, Room C230 01.05.2023 14:15 - 17:00 Cours PER 21, Room C230 08.05.2023 14:15 - 17:00 Cours PER 21, Room C230 15.05.2023 14:15 - 17:00 Cours PER 21, Room C230 22.05.2023 14:15 - 17:00 Cours PER 21, Room C230 -
Assessments methods
Written exam
Assessments methods By rating -
Assignment
Valid for the following curricula: Additional Courses in Sciences
Version: ens_compl_sciences
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