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Programme 2017/2018

The labs take place in the room KN:E-132 and start at 18:00 on every Tuesday.

Teacher: Radoslav Škoviera (radoslav.skoviera(at)cvut.cz)

Week Date Topic Deadline Evaluation
01 03.10.2017 Introduction to Matlab
02 10.10.2017 Histogram, image histogram equalization, histogram matching 23.10.2016 3 pts.
03 17.10.2017 cont.
04 24.10.2017 Dynamic Programming (DP), its use for path finding in images 06.11.2016 4 pts.
05 31.10.2017 cont.
06 07.11.2017 High Dynamic Range (HDR) 20.11.2016 4 pts.
07 14.11.2017 cont.
08 21.11.2017 Segmentation 11.12.2016 5 pts.
09 28.11.2017 cont.
10 25.12.2017 cont.
11 12.12.2017 Registration 01.01.2018 4 pts.
12 19.12.2017 cont.
13 02.01.2018 Image restoration 12.01.2018 4 pts.
14 09.01.2018 cont.

Evaluation of assignments

There will be 6 tasks assigned during the semester. It is possible to earn 2-5 points for each task, according to its difficulty (see the table above). It is possible to earn 24 points maximally.

Your need to update your solutions to our system. The evaluation is done automatically. You can see the earned points in few seconds or tens of seconds. You can upload your solution multiple times. The points earned for the last uploaded version are relevant.

Assessments

Assessment can be given if a student in question:

  • has submitted all the assignments,
  • has gained at least 50 % of the max number of points, i.e. at least 12 points.

There is no limit on allowed absences. However, we strongly recommend you to attend the labs. We will also consider the attandance in case of any problems with getting the assessment.

Points from the assignments form 40 % of the final grade.

Late assignment submissions

You have at least two weeks to solve each tast (see the table above). Late submissions are penalized according to the following table:

Late by Penalty
0–24 hours 10 %
1–3 days 20 %
4–5 days 30 %
6–7 days 40 %
more than 8 days 50 %

Anti-Plagiarism Policy

Plagiarism results in not getting the assessment, and therefore in failing the course.

courses/be4m33dzo/labs/start.txt · Last modified: 2017/12/18 10:06 by skovirad