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#40414 / #6

SS 2017 - WS 2018/19

English

Digital Image Processing

6

Hellwich, Olaf

benotet

Schriftliche Prüfung

Zugehörigkeit


Fakultät IV

Institut für Technische Informatik und Mikroelektronik

34341600 FG Computer Vision and Remote Sensing

No information

Kontakt


MAR 6-5

Hellwich, Olaf

olaf.hellwich@tu-berlin.de

Learning Outcomes

Participants learn basic concepts, their theoretical foundation, and the most common algorithms used in digital image processing. After completing the module, participants understand strengths and limitations of different methods, are able to correctly and successfully apply methods and algorithms to real world problems, and are aware of performance criteria. More specifically, participants will be able to demonstrate 1) Knowledge of theory and methods of signal processing 2) Application to problems of image enhancement and image restoration 3) Understanding regarding concepts of feature extraction

Content

Fourier transform, Image representation in frequency domain, Wavelets, Filtering, Inverse & Wiener Filter, image enhancement, edge detection, segmentation, interest operators, mathematical morphology (skeletonization, medial axis and distance transform), texture, graphical models. Image formation: Pinhole camera model, digital cameras, geometric image transformations Signal processing: Convolution, fourier transform, convolution via the frequency domain Image filtering: Low- and high-pass filtering, mathematical morphology Image restoration: Inverse filter, Wiener filter, super-resolution Feature extraction: Texture, extraction of salient points, segmentation Advances image processing: Scale space, graphical models, image transformations

Module Components

Pflichtteil:

All Courses are mandatory.

Course NameTypeNumberCycleLanguageSWSVZ
Digital Image ProcessingVL0433 L110WiSeNo information2
Digital Image ProcessingUE0433 L 111WiSeNo information2

Workload and Credit Points

Digital Image Processing (VL):

Workload descriptionMultiplierHoursTotal
Attendance15.02.0h30.0h
Preparation/ Post-processing15.02.0h30.0h
60.0h(~2 LP)

Digital Image Processing (UE):

Workload descriptionMultiplierHoursTotal
Attendance15.02.0h30.0h
Preparation/ Post-processing15.06.0h90.0h
120.0h(~4 LP)
The Workload of the module sums up to 180.0 Hours. Therefore the module contains 6 Credits.

Description of Teaching and Learning Methods

The lecture explains methods and algorithms, their underlying philosophy, as well as mathematical foundations from a rather theoretical point of view. Participants are expected to rehearse topics after class in preparation for the exercises. The exercises take place in parallel. They rehearse methods and algorithms from a more practical point of view, introduce variations and extensions, and discuss implementation details of the homework assignments. Homework assignments are given during the exercises and must be solved within two weeks. These assignments cover theoretical questions as well as programming exercises and are solved by working in small groups of three to four students.

Requirements for participation and examination

Desirable prerequisites for participation in the courses:

none

Mandatory requirements for the module test application:

This module has no requirements.

Module completion

Grading

graded

Type of exam

Written exam

Language

English

Duration/Extent

90 minutes

Duration of the Module

The following number of semesters is estimated for taking and completing the module:
1 Semester.

This module may be commenced in the following semesters:
Wintersemester.

Maximum Number of Participants

This module is not limited to a number of students.

Registration Procedures

Registration for the exam has to be made online.

Recommended reading, Lecture notes

Lecture notes

Availability:  unavailable

 

Electronical lecture notes

Availability:  available
Additional information:
https://isis.tu-berlin.de

 

Literature

Recommended literature
http://www.cv.tu-berlin.de/menue/lehre/wintersemester/digital_image_processing/parameter/en/

Assigned Degree Programs


This module is used in the following Degree Programs (new System):

Studiengang / StuPOStuPOsVerwendungenErste VerwendungLetzte Verwendung
This module is not used in any degree program.

Students of other degrees can participate in this module without capacity testing.

Nebenhörerinnen / Nebenhörer können an der Veranstaltung teilnehmen.

Miscellaneous

The module is offered each winter term.