392180 Deep Learning in Bioimage Informatics (S) (WiSe 2018/2019)

Contents, comment

Deep Learning has changed the game in Computer Vision on a fundamental level and images from „ordinary“ camera applications (traffic, social media etc) can now be interpreted algorithimcally with impressive sensitivity and precision. However, in the domain of bioimage informatics (microscopy, MALDI imaging, hyperspectral imaging, histopathology and marine imaging) the application of deep learning architectures seems less straight forward as some deep learning prerequisites are not met (lower data volume, lesser training labels, strong class imbalance, lower signal quality, weak labels etc). In this seminar we want to explore the recent works published on this matter and discuss the open issues.

Teaching staff

Dates ( Calendar view )

Frequency Weekday Time Format / Place Period  

Show passed dates >>

Subject assignments

  • None found

No more requirements
No eLearning offering available
Address:
WS2018_392180@ekvv.uni-bielefeld.de
This address can be used by teaching staff, their secretary's offices as well as the individuals in charge of course data maintenance to send emails to the course participants. IMPORTANT: All sent emails must be activated. Wait for the activation email and follow the instructions given there.
If the reference number is used for several courses in the course of the semester, use the following alternative address to reach the participants of exactly this: VST_144631408@ekvv.uni-bielefeld.de
Notes:
Additional notes on the electronic mailing lists
Last update basic details/teaching staff:
Wednesday, March 27, 2019 
Last update times:
Monday, September 24, 2018 
Last update rooms:
Monday, September 24, 2018 
Type(s) / SWS (hours per week per semester)
seminar (S) / 2
Department
Faculty of Technology
Questions or corrections?
Questions or correction requests for this course?
Planning support
Clashing dates for this course
Links to this course
If you want to set links to this course page, please use one of the following links. Do not use the link shown in your browser!
The following link includes the course ID and is always unique:
https://ekvv.uni-bielefeld.de/kvv_publ/publ/vd?id=144631408
Send page to mobile
Click to open QR code
Scan QR code: Enlarge QR code
ID
144631408