Duration:
1 Semester | Turnus of offer:
not available anymore | Credit points:
4 |
Course of studies, specific field and terms: - Master Computer Science 2019 (module part), Module part, Arbitrary semester
- Master MES 2020 (module part), computer science / electrical engineering, Arbitrary semester
- Master Entrepreneurship in Digital Technologies 2020 (module part), Module part, Arbitrary semester
- Master IT-Security 2019 (module part), Module part, 1st or 2nd semester
- Master Computer Science 2014 (module part), advanced curriculum, Arbitrary semester
- Master Entrepreneurship in Digital Technologies 2014 (module part), Module part, Arbitrary semester
- Master MES 2014 (module part), computer science / electrical engineering, 1st semester
- Master Computer Science 2014 (Module part of a compulsory module), specialization field robotics and automation, Arbitrary semester
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Classes and lectures: - Pattern Recognition (lecture, 2 SWS)
- Pattern Recognition (exercise, 1 SWS)
| Workload: - 20 Hours exam preparation
- 45 Hours in-classroom work
- 55 Hours private studies
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Contents of teaching: | - Introduction to probability theory
- Principles of feature extraction and pattern recognition
- Bayes decision theory
- Discriminance functions
- Neyman-Pearson test
- Receiver Operating Characteristic
- Parametric and nonparametric density estimation
- kNN classifiers
- Linear classifiers
- Support vector machines and kernel trick
- Random Forest
- Neural Nets
- Feature reduction and feature transforms
- Validation of classifiers
- Selected application scenarios: acoustic scene classification for the selection of hearing-aid algorithms, acoustic event recognition, attention classification based on EEG data, speaker and emotion recognition
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Qualification-goals/Competencies: - Students are able to describe the main elements of feature extraction and pattern recognition.
- They are able to explain the basic elements of statistical modeling.
- They are able to use feature extraction, feature reduction and pattern classification techniques in practice.
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Grading through: - exam type depends on main module
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Responsible for this module: Teachers: |
Literature: - R. O. Duda, P. E. Hart, D. G. Storck: Pattern Classification - New York: Wiley
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Language: |
Notes:Admission requirements for the module: - None Admission requirements for the examination: - Successful completion of the exercises during the semester (at least 50% of the achievable points). Module Exam: - CS4220-L1: Pattern Recognition, written exam, 90 min, 100% of module grade. (Is equal to CS4220SJ14) (Is module part of CS4510, CS4290, CS5274-KP08) |
Letzte Änderung: 28.8.2023 |
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