Let 's Get Dirty:基于GAN的数据增强,用于自动驾驶中相机镜头污染检测

Michal Uřičář, Ganesh Sistu, Hazem Rashed, Antonín Vobecký, V. Kumar, P. Krízek, Fabian Burger, S. Yogamani
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引用次数: 33

摘要

广角鱼眼相机通常用于自动驾驶停车和低速导航任务。四个这样的摄像头组成了一个环视系统,提供了车辆的完整和详细的视图。这些相机直接暴露在恶劣的环境中,很容易被泥土、灰尘、水、霜弄脏。相机镜头上的污垢会严重降低视觉感知算法,由污垢检测算法触发的相机清洁系统正越来越多地被部署。虽然恶劣的天气条件,如下雨,最近引起了人们的注意,但对一般污染的研究却很有限。主要原因是很难收集到多样化的数据集,因为这是一个相对罕见的事件。我们提出了一种新的基于GAN的算法来生成污物图像的不可见模式。此外,该方法还能自动提供相应的污染掩码,消除了人工标注的成本。对生成的污物图像进行增强训练,将污物检测任务的准确率显著提高了18%,证明了其实用性。手动注释的脏数据集和生成的增强数据集将被公开。我们在cityscape数据集上展示了我们的鱼眼训练GAN模型的泛化。我们用脏数据对语义分割算法的退化进行了实证评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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 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.
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