Let's Get Dirty: GAN Based Data Augmentation for Camera Lens Soiling Detection in Autonomous Driving

Wide-angle fisheye cameras are commonly used in automated driving for parking and low-speed navigation tasks. Four of such cameras form a surround-view system that provides a complete and detailed view of the vehicle. These cameras are directly exposed to harsh environmental settings and can get soi...

Full description

Saved in:
Bibliographic Details
Published inProceedings / IEEE Workshop on Applications of Computer Vision pp. 766 - 775
Main Authors Uricar, Michal, Sistu, Ganesh, Rashed, Hazem, Vobecky, Antonin, Kumar, Varun Ravi, Krizek, Pavel, Burger, Fabian, Yogamani, Senthil
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.01.2021
Subjects
Online AccessGet full text
ISSN2642-9381
DOI10.1109/WACV48630.2021.00081

Cover

More Information
Summary:Wide-angle fisheye cameras are commonly used in automated driving for parking and low-speed navigation tasks. Four of such cameras form a surround-view system that provides a complete and detailed view of the vehicle. These cameras are directly exposed to harsh environmental settings and can get soiled very easily by mud, dust, water, frost. Soiling on the camera lens can severely degrade the visual perception algorithms, and a camera cleaning system triggered by a soiling detection algorithm is increasingly being deployed. While adverse weather conditions, such as rain, are getting attention recently, there is only limited work on general soiling. The main reason is the difficulty in collecting a diverse dataset as it is a relatively rare event.We propose a novel GAN based algorithm for generating unseen patterns of soiled images. Additionally, the proposed method automatically provides the corresponding soiling masks eliminating the manual annotation cost. Augmentation of the generated soiled images for training improves the accuracy of soiling detection tasks significantly by 18% demonstrating its usefulness. The manually annotated soiling dataset and the generated augmentation dataset will be made public. We demonstrate the generalization of our fisheye trained GAN model on the Cityscapes dataset. We provide an empirical evaluation of the degradation of the semantic segmentation algorithm with the soiled data.
ISSN:2642-9381
DOI:10.1109/WACV48630.2021.00081