论文标题

道路成像和坑洼检测的计算机视觉:系统和算法的最新评论

Computer Vision for Road Imaging and Pothole Detection: A State-of-the-Art Review of Systems and Algorithms

论文作者

Ma, Nachuan, Fan, Jiahe, Wang, Wenshuo, Wu, Jin, Jiang, Yu, Xie, Lihua, Fan, Rui

论文摘要

二十年来,普遍将计算机视觉算法用于3D道路成像和孔洞检测。但是,缺乏有关最先进的计算机视觉技术的系统调查文章,尤其是为解决这些问题而开发的深度学习模型。本文首先介绍用于2-D和3-D道路数据采集的传感系统,包括相机,激光扫描仪和Microsoft Kinect。之后,它彻底而全面地回顾了SOTA计算机视觉算法,包括(1)经典的2-D图像处理,(2)3-D点云建模和分割,以及(3)用于道路坑洼检测的机器/深度学习。本文还讨论了基于计算机视觉的道路坑洞检测方法的现有挑战和未来发展趋势:基于经典的2-D图像处理和基于3-D点云建模和基于细分的方法已经成为历史;卷积神经网络(CNN)表现出了令人信服的道路坑洼检测结果,并有望随着自我/未审议的多模式语义细分的未来进步而破坏瓶颈。我们认为,这项调查可以作为开发下一代道路条件评估系统的实际指导。

Computer vision algorithms have been prevalently utilized for 3-D road imaging and pothole detection for over two decades. Nonetheless, there is a lack of systematic survey articles on state-of-the-art (SoTA) computer vision techniques, especially deep learning models, developed to tackle these problems. This article first introduces the sensing systems employed for 2-D and 3-D road data acquisition, including camera(s), laser scanners, and Microsoft Kinect. Afterward, it thoroughly and comprehensively reviews the SoTA computer vision algorithms, including (1) classical 2-D image processing, (2) 3-D point cloud modeling and segmentation, and (3) machine/deep learning, developed for road pothole detection. This article also discusses the existing challenges and future development trends of computer vision-based road pothole detection approaches: classical 2-D image processing-based and 3-D point cloud modeling and segmentation-based approaches have already become history; and Convolutional neural networks (CNNs) have demonstrated compelling road pothole detection results and are promising to break the bottleneck with the future advances in self/un-supervised learning for multi-modal semantic segmentation. We believe that this survey can serve as practical guidance for developing the next-generation road condition assessment systems.

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