SynWoodScape: Synthetic Surround-view Fisheye Camera Dataset for Autonomous Driving

Surround-view cameras are a primary sensor for automated driving, used for near-field perception. It is one of the most commonly used sensors in commercial vehicles primarily used for parking visualization and automated parking. Four fisheye cameras with a 190{\deg} field of view cover the 360{\deg}...

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Veröffentlicht in:arXiv.org 2023-01
Hauptverfasser: Ahmed Rida Sekkat, Dupuis, Yohan, Kumar, Varun Ravi, Rashed, Hazem, Yogamani, Senthil, Vasseur, Pascal, Honeine, Paul
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Dupuis, Yohan
Kumar, Varun Ravi
Rashed, Hazem
Yogamani, Senthil
Vasseur, Pascal
Honeine, Paul
description Surround-view cameras are a primary sensor for automated driving, used for near-field perception. It is one of the most commonly used sensors in commercial vehicles primarily used for parking visualization and automated parking. Four fisheye cameras with a 190{\deg} field of view cover the 360{\deg} around the vehicle. Due to its high radial distortion, the standard algorithms do not extend easily. Previously, we released the first public fisheye surround-view dataset named WoodScape. In this work, we release a synthetic version of the surround-view dataset, covering many of its weaknesses and extending it. Firstly, it is not possible to obtain ground truth for pixel-wise optical flow and depth. Secondly, WoodScape did not have all four cameras annotated simultaneously in order to sample diverse frames. However, this means that multi-camera algorithms cannot be designed to obtain a unified output in birds-eye space, which is enabled in the new dataset. We implemented surround-view fisheye geometric projections in CARLA Simulator matching WoodScape's configuration and created SynWoodScape. We release 80k images from the synthetic dataset with annotations for 10+ tasks. We also release the baseline code and supporting scripts.
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subjects Algorithms
Annotations
Automation
Cameras
Commercial vehicles
Computer Science - Computer Vision and Pattern Recognition
Datasets
Fisheye views
Optical flow (image analysis)
Parking
title SynWoodScape: Synthetic Surround-view Fisheye Camera Dataset for Autonomous Driving
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