Survey on Fish-Eye Cameras and Their Applications in Intelligent Vehicles - Robotics Institute Carnegie Mellon University

Survey on Fish-Eye Cameras and Their Applications in Intelligent Vehicles

Yeqiang Qian, Ming Yang, and John M. Dolan
Journal Article, IEEE Transactions on Intelligent Transportation Systems (ITIS '22), Vol. 23, No. 12, pp. 22755 - 22771, December, 2022

Abstract

Fish-eye cameras have become essential sensors in intelligent vehicles. Due to its unique projection principle, a fish-eye camera can provide a large field of view. Benefiting from this special feature, fish-eye cameras have rich applications in intelligent vehicles. However, dataset and distortion problems are still challenges when applying fish-eye cameras in reality. This work introduces the projection principle of fish-eye cameras, and four classic fish-eye image representation models are presented. Then, the typical fish-eye datasets are presented, including real collected data and virtually generated data. Through the organization and summarization of the relevant studies, we demonstrate various applications of fish-eye cameras in intelligent vehicles, e.g., object detection and tracking, image segmentation, mapping and localization, and around-view monitoring. These works design various strategies to exploit the advantages of fish-eye cameras and prevent image distortion problems, showing the broad application prospects of such cameras. Finally, we discuss the development tendencies of intelligent vehicle applications involving fish-eye cameras.

BibTeX

@article{Qian-2022-134817,
author = {Yeqiang Qian and Ming Yang and John M. Dolan},
title = {Survey on Fish-Eye Cameras and Their Applications in Intelligent Vehicles},
journal = {IEEE Transactions on Intelligent Transportation Systems (ITIS '22)},
year = {2022},
month = {December},
volume = {23},
number = {12},
pages = {22755 - 22771},
keywords = {intelligent vehicles, fish-eye cameras, image distortion},
}