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Computer Vision Laboratory 2012:
Computer Vision on Mobile Devices




     Info Event, 21.09.2012

       Institute of Visual Computing
Computer Vision Laboratory 2012

                               Lecturers:
    Kevin Koeser                                             Kalin Kolev

l   office: CNB G104                                         office: CNB G102.2
    e-mail: kevin.koeser@inf.ethz.ch                         e-mail: kalin.kolev@inf.ethz.ch

     available: 15.10.2012 - 21.12.2012



                     Teaching Assistant:

                                    Lorenz Meier

                                    office: CAB G86.3
                                    e-mail: lm@inf.ethz.ch




                      Institute of Visual Computing
Course Details



180 h project work per person
Prerequisite: Computer Vision Lecture (or similar)
Final presentations and demos
Hand in written report (~2-3 pages) and sources (+ wiki doc)
Participation in tutorials mandatory
Workspace/mobile devices provided if necessary
Webpage: http://cvg.ethz.ch/teaching/2012fall/cvl/


                     Institute of Visual Computing
Important Dates


By Fri., 5.10.: hand in work plan
 (1 page: work plan, milestones, when what, template provided)

Fri., 28.09: Tutorial “Android SDK/NDK”
Fri., 05.10.: Tutorial “OpenCV Basics and Camera Calibration”
Fri., 09.11.: Mid-term presentation
Fri., 21.12.: Final presentation
By Fri., 21.12. (31.12.): final report + documented sources

                      Institute of Visual Computing
Offered Project Topics


Silhouette-based live 3D reconstruction
 (2 persons)

Stereo-based live 3D reconstruction
 (2 persons)

Markerless augmented reality on a cell phone
 (2 persons)

3D reconstruction on a stereo tablet
 (2 persons)

On-site event re-living (1 person)
                     Institute of Visual Computing

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ETHZ CV2012: Information

  • 1. Computer Vision Laboratory 2012: Computer Vision on Mobile Devices Info Event, 21.09.2012 Institute of Visual Computing
  • 2. Computer Vision Laboratory 2012 Lecturers: Kevin Koeser Kalin Kolev l office: CNB G104 office: CNB G102.2 e-mail: kevin.koeser@inf.ethz.ch e-mail: kalin.kolev@inf.ethz.ch available: 15.10.2012 - 21.12.2012 Teaching Assistant: Lorenz Meier office: CAB G86.3 e-mail: lm@inf.ethz.ch Institute of Visual Computing
  • 3. Course Details 180 h project work per person Prerequisite: Computer Vision Lecture (or similar) Final presentations and demos Hand in written report (~2-3 pages) and sources (+ wiki doc) Participation in tutorials mandatory Workspace/mobile devices provided if necessary Webpage: http://cvg.ethz.ch/teaching/2012fall/cvl/ Institute of Visual Computing
  • 4. Important Dates By Fri., 5.10.: hand in work plan (1 page: work plan, milestones, when what, template provided) Fri., 28.09: Tutorial “Android SDK/NDK” Fri., 05.10.: Tutorial “OpenCV Basics and Camera Calibration” Fri., 09.11.: Mid-term presentation Fri., 21.12.: Final presentation By Fri., 21.12. (31.12.): final report + documented sources Institute of Visual Computing
  • 5. Offered Project Topics Silhouette-based live 3D reconstruction (2 persons) Stereo-based live 3D reconstruction (2 persons) Markerless augmented reality on a cell phone (2 persons) 3D reconstruction on a stereo tablet (2 persons) On-site event re-living (1 person) Institute of Visual Computing