Image Analysis with Applications in Microscopy
|Period:||Semester 2||Hours of study:||26:00 hrs|
- Yes Elective choice
- Yes Contractonderwijs
- Yes Exchange
- Yes Study Abroad
- No Evening course
- No A la Carte
- No Honours Class
BSc in Computer Science, Life Science and Technology, Biology, Bio-Pharmaceutical Sciences.
In this course the origin and analysis of images acquired through microscopy is the leading theme. Images play a major role in understanding of biological processes. Bio-molecular rocesses are visualized by a range of microscopical techniques and modalities. From images coherent visualizations and models are derived. The characteristic sequence of image analysis starts with the acquisition, proceeds to restoration and segmentation to conclude with analysis. This sequence will be the skeleton of this course. Image acquisition in microscopy will be dealt with on a theoretical as well as practical level. In a series of lectures all important aspects of imaging along the line of the characteristic sequence of image analysis are dealt with. Concepts of image processing will be introduced and it will be discussed how set of image features is compiled in measurements. Subjects will use the 2D imaging as a means of explaining the principles and the switch to multi-dimensional imaging to illustrate the implications of imaging in research and connect to current topics in bio-medical research. Presenting results through visualization and modeling is an ingredient found in applications that are discussed. The course consists of a series of lectures, practical assignments using programmable image analysis software environments and “hands-on” experience with microscopes (i.e. image acquisition). The course is concluded with a report on the practical work and a written exam.
At completion of the course, the student should be able to:
- Understand the basic theory of Image Processing and Analysis.
- Understand the principles of microscopy imaging and how to process and analyze images originating from a microscope.
- Understand the basic algorithms for image processing and how to get to a measurement
- Have gained insight in the conditions which should be fulfilled to obtain reliable measurements from images, especially microscope images
- Have been exposed to software systems for image processing and analysis and understand the basic operational flow. Solve problems within a programmable software environment.
- Have gained understanding of the mode of operation of a (automated) microscope and the meaning of the images it produces.
The most recent timetable can be found at the students' website.
Mode of instruction
- Practical Software
- Practical Image Acquisition/Microscopy
- Site Visits
Hours of study: 168:00 hrs (= 6 EC)
Lectures: 26:00 hrs
Tutoring: 12:00 hrs
Practical work: 96:00 hrs
Examination: 4:00 hrs
Reporting: 30:00 hrs
- Written exam (divided over two tests);
- Report on Assignments;
- Mark = 50% Written Exam + 50% Report.
- Digital Image Processing, 3rd edition, Rafael C. Gonzalez & Richard E. Woods, Publisher Prentice Hall, ISBN 0201180758
- Papers made available on the website
- Handouts from the lectures made available on the website.
- You have to sign up for courses and exams (including retakes) in uSis. Check this link for information about how to register for courses.
- Previous course title was Microscopy, Modeling and Visualisation.
|Is part of||Programme type||Semester||Block|
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|Biology: Biology and Business Studies||Master||2|
|Biology: Biology and Education||Master||2|
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|Computer Science: Computer Science and Education||Master||2|
|Computer Science: Computer Science and Science Communication and Society||Master||2|