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WoodScape: A multi-task, multi-camera fisheye dataset for autonomous driving

Authors :
Yogamani, Senthil
Hughes, Ciaran
Horgan, Jonathan
Sistu, Ganesh
Varley, Padraig
O'Dea, Derek
Uricar, Michal
Milz, Stefan
Simon, Martin
Amende, Karl
Witt, Christian
Rashed, Hazem
Chennupati, Sumanth
Nayak, Sanjaya
Mansoor, Saquib
Perroton, Xavier
Perez, Patrick
Publication Year :
2019

Abstract

Fisheye cameras are commonly employed for obtaining a large field of view in surveillance, augmented reality and in particular automotive applications. In spite of their prevalence, there are few public datasets for detailed evaluation of computer vision algorithms on fisheye images. We release the first extensive fisheye automotive dataset, WoodScape, named after Robert Wood who invented the fisheye camera in 1906. WoodScape comprises of four surround view cameras and nine tasks including segmentation, depth estimation, 3D bounding box detection and soiling detection. Semantic annotation of 40 classes at the instance level is provided for over 10,000 images and annotation for other tasks are provided for over 100,000 images. With WoodScape, we would like to encourage the community to adapt computer vision models for fisheye camera instead of using naive rectification.<br />Comment: Accepted for Oral Presentation at IEEE International Conference on Computer Vision (ICCV) 2019. Please refer to our website https://woodscape.valeo.com and https://github.com/valeoai/woodscape for release status and updates

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1905.01489
Document Type :
Working Paper