Course Project Image Processing Pattern Recognition
Responsible: Prof. Dr. rer. nat. Dietmar Kunz
Course
Meets requirements of following modules(MID)
Course Organization
| Version |
| created |
2011-11_09 |
| VID |
1 |
| valid from |
WS 2012/13 |
| valid to |
|
|
|
| Course identifiers |
| Long name |
Project Image Processing Pattern Recognition |
| CID |
F07_BV3 |
| CEID (exam identifier) |
|
|
| Contact hours per week (SWS) |
| Lecture |
|
| Exercise (unsplit) |
|
| Exercise (split) |
|
| Lab |
|
| Project |
2 |
| Seminar |
|
| Tutorial(voluntary) |
|
|
|
| Total contact hours |
| Lecture |
|
| Exercise (unsplit) |
|
| Exercise (split) |
|
| Lab |
|
| Project |
30 |
| Seminar |
|
| Tutorial (voluntary) |
|
|
|
| Max. capacity |
| Exercise (unsplit) |
|
| Exercise (split) |
|
| Lab |
|
| Project |
18 |
| Seminar |
|
|
Total effort (hours): 180
Instruction language
Study Level
Prerequisites
- Module Image Processing
- Module Pattern Recognition
Textbooks, Recommended Reading
- Burger/Burge: Digitale Bildverarbeitung
- Gonzales/Woods: Digital Image Processing
Instructors
- Prof. Dr. rer. nat. Dietmar Kunz
- Prof. Dr. Lothar Thieling
Supporting Scientific Staff
Transcipt Entry
Project Image Processing
Assessment
| Type |
| oR |
oral presentation of project results |
| Total effort [hours] |
| oR |
10 |
Frequency: 1/year
Course components
Project
Objectives
Contents
- problem specific methods resulting from system model and literature search
Acquired Skills
- skilled use of software development environment
- skilled use of tools for image processing and image analysis
- skilled use of tools for training neural networks
- understanding of scientific texts in English
- presentation of project results in English
Operational Competences
- accomplish complex tasks in teams
- present project results
- Derive complex problem solutions that can be implemented using image processing and image analysis
- analyse and understand complex problems
- derive system behaviour from specifying texts
- analyse systems
- model system from subsystems
- model, implement, and test subsystems
- map subsystems as far as possible on available components (image processing modules), i.e. selection of models and parameters
- implement and test required but not available image processing modules in C or Java using software development environment
- implement, test, and validate entire system (problem solution)
- Derive problem solution as chain of algorithms using image processing modules
- parametrize image processing modules
- test and validate solution
- iteratively improve algorithmic chain
Additional Component Assessment
| Type |
| fTP |
presentations in regular team meetings, presentation and review of milestone results |
| wR |
written report, software or application |
| Contribution to course grade |
| fTP |
milestone presentation: rated (0 .. 10% of final marks) |
| wR |
written report, software or application, rated (>50 % of final marks) |
Frequency: 1/year

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