Computer Vision Lab

Computer Vision Lab

Search
Skip to content
  • Home
  • Staff
    • Current Staff
    • Former Staff
  • Research
    • Current Projects
    • Completed Projects
    • Research Areas
    • Databases
    • Technical Reports
  • Teaching
    • Wintersemester
    • Sommersemester
    • Bachelor- / Masterarbeiten
  • Open Positions
  • About
Uncategorized

Efficient Models for Real-time Person Segmentation on Mobile Phones

May 25, 2021 Strohmayer Julian

Supplementary material for the paper Efficient Models for Real-time Person Segmentation on Mobile Phones, accepted at the European Signal Processing Conference (EUSIPCO) 2021.

Address

TU Wien
Faculty of Informatics
Institute of Visual Computing & Human-Centered Technology
Computer Vision Lab

Favoritenstr. 9/193-1
A-1040 Vienna, Austria
Phone: +43-1-58801-193176
e-mail: sek@cvl.tuwien.ac.at
for directions see about

Teaching (NEW)

  • Text Recognition in Graffiti Images
  • Change Detection in Graffiti Images
  • Diploma Thesis – Assisted/Automated Driving
  • Automated Analysis of NHM Herbarium Collection
  • Selected Topics in Active Assisted Living in collaboration with a company

RESEARCH (NEWS)

  • HISTORIAN: a large-scale HISTORIcal film dataset with cinematographic ANnotation
  • Event-based and frame-based binocular visual odometry system
  • Abenteuer Alltag
  • PhysAgeNet
  • CaringRobots/RoboticCare

Open Positions

  • New PhD Position in 3D Computer Vision (Prae-Doc)
  • Diploma Thesis – Assisted/Automated Driving

Categories

  • News
  • Open Positions
    • Open Positions (active)
    • Open Positions (inactive)
  • Publications and Presentations
  • Research
    • Completed Projects
    • Current Projects
    • Databases
  • Staff
    • Employee
    • Faculty
    • Former Employee
    • Lecturer
    • PhD Student
    • Research
  • Teaching
    • Diplomarbeiten
    • Informatik Praktika
    • Sommersemester
    • Wintersemester
  • Uncategorized

Meta

  • Log in
  • Entries feed
  • Comments feed
  • WordPress.org
Proudly powered by WordPress
Data Privacy Statement