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F07_IBA_en
(17 Jan 2019,
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Course Industrial Computer Vision
Course
Meets requirements of following modules(MID)
Course Organization
Assessment
Course components
Lecture/Exercise
Lab
Responsible:
Prof. Dr. Thieling
Course
Meets requirements of following modules(MID)
in active programs
Ba ET2012 IBA
Ba MT2012 BV2
Ba TIN2012 IBA
Course Organization
Version
created
2019-01-17
VID
1
valid from
WS 2019/20
valid to
Course identifiers
Long name
Industrial Computer Vision
CID
F07_IBA
CEID (exam identifier)
Contact hours per week (SWS)
Lecture
2
Exercise (unsplit)
Exercise (split)
Lab
2
Project
Seminar
Tutorial(voluntary)
Total contact hours
Lecture
30
Exercise (unsplit)
Exercise (split)
Lab
30
Project
Seminar
Tutorial (voluntary)
Max. capacity
Exercise (unsplit)
Exercise (split)
30
Lab
15
Project
Seminar
Total effort (hours):
150
Instruction language
German
Study Level
Undergraduate
Prerequisites
fundamentals in image processing (as treated in IBV or BV1)
basic skills in Java and/or C
basic skills in analysis and linear algebra
Textbooks, Recommended Reading
Rafael C. Gonzalez, Richard E. Woods, Digital Image Processing, Prentice Hall
Scott E Umbaugh, COMPUTER VISION and IMAGE PROCESSING: A Practical Approach Using CVIPtools, Prentice Hall
Wolfgang Abmayer, Einführung in die digitale Bildverarbeitung,Teubner
Instructors
Prof. Dr. Thieling
Supporting Scientific Staff
M.Sc. Hanna Sidnenka
Transcipt Entry
Industrial Computer Vision
Assessment
Type
oE
normal case (except on large numbers of assessments: wE
Total effort [hours]
oE
10
Frequency:
3/year
Course components
Lecture/Exercise
Objectives
Contents
image construction and access to image data
grey-level image and colour image
development environment
software design tools
compiler
linker
debugger
softwaretools for image processing and image analysis
softare-based access to image data and parameters
overview of the available ip-modules (moduls dor image processing and image analysis)
design and implementation of own ip-moduls
design of algorithmic chains based on ip-modules using visual programming
segmentation
histogram-based segmentation
histogram analysis
shading and its compensation
region-based segmentation
filling
split and merge
region growing
contour-based segmentation
contour tracking
hough-transformation
feature extraction
geometric features
basic features (area, perimeter, shape factor)
central moments
normalized central moments
polar distance
curvature
DFT of polar distance and curvature
color features (HSI)
texture features
co-occurrence matrix
haralick features
Klassifikation von Merkmalen
terms and concepts
feature vector, feature space, object classes
supervised / unsupervised classification
learning / not learning classification
typical methods
quader method
minimum distance
nearest neighbour
maximum likelihood
neuronale Netze
the artificial neuron as a simple classifier
operation
activation function
bias
training a neuron (gradient descent)
multi-layer-perceptron
operation
purposes of the layers
backpropagation training algorithm
development environment for creating and training neural networks
design and configuration of neural networks
training neural networks
verification tof rained networks
generating C-functions from trained networks
Acquired Skills
the presented methods for segmentation can be
named
described
delineated in terms of application areas
evaluated in terms of advantages and disadvanteges
problemspecific parameterized
the presented methods for feature extraction can be
named
described
delineated in terms of application areas
evaluated in terms of advantages and disadvanteges
problemspecific parameterized
the presented methods for scallsification can be
named
described
delineated in terms of application areas
evaluated in terms of advantages and disadvanteges
problemspecific parameterized
Additional Component Assessment
none
Lab
Objectives
Acquired Skills
purposeful handling of the software development environment
purposeful handling of the softwaretools for image processing and image analysis
purposeful handling of the development environment for creating and training neural networks
Operational Competences
deal with complex tasks in a small team
derive complex solutions that can be implemented using image processing and image analysis
Additional Component Assessment
none
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Topic-Revision: r5 - 17 Jan 2019,
GeneratedContent
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