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Surround-view Fisheye Camera Perception for Automated Driving: Overview, Survey and Challenges

2022-05-26 11:38:04
Varun Ravi Kumar, Ciaran Eising, Christian Witt, Senthil Yogamani

Abstract

Surround-view fisheye cameras are commonly used for near-field sensing in automated driving. Four fisheye cameras on four sides of the vehicle are sufficient to cover 360° around the vehicle capturing the entire near-field region. Some primary use cases are automated parking, traffic jam assist, and urban driving. There are limited datasets and very little work on near-field perception tasks as the main focus in automotive perception is on far-field perception. In contrast to far-field, surround-view perception poses additional challenges due to high precision object detection requirements of 10cm and partial visibility of objects. Due to the large radial distortion of fisheye cameras, standard algorithms can not be extended easily to the surround-view use case. Thus we are motivated to provide a self-contained reference for automotive fisheye camera perception for researchers and practitioners. Firstly, we provide a unified and taxonomic treatment of commonly used fisheye camera models. Secondly, we discuss various perception tasks and existing literature. Finally, we discuss the challenges and future direction.

Abstract (translated)

URL

https://arxiv.org/abs/2205.13281

PDF

https://arxiv.org/pdf/2205.13281.pdf


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