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