基于车辆激光点云和全景序列图像的道路裂缝智能提取

Ming Guo , Li Zhu , Ming Huang , Jie Ji , Xian Ren , Yaxuan Wei , Chutian Gao
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引用次数: 0

摘要

鉴于传统方法识别路面裂缝的效果有限,且二维照片中缺乏全面的深度和位置数据,本研究提出了一种提取路面裂缝的智能策略。该方法包括整合车载系统获得的激光点云数据和全景序列图像。研究采用车载激光雷达测量系统,同时获取激光点云和全景序列图像数据。利用卷积神经网络从全景序列图像中提取裂缝。然后将提取的序列图像与激光点云对齐,从而为车载三维(3D)点云分配 RGB 信息,为二维(2D)全景图像分配位置信息。此外,根据裂缝高程变化设置阈值,以提取对齐的路面点云。这样就能获得与裂缝相关的三维数据。实验结果表明,使用卷积神经网络提取道路裂缝取得了显著效果。利用点云和图像配准技术,可以提取与道路裂缝有关的精确位置数据。与传统方法相比,这种方法具有更高的精确度。此外,它还有助于快速准确地识别和定位道路裂缝,从而在确保道路维护和交通安全方面发挥重要作用。因此,这项技术在智能交通和城市化发展领域得到了广泛应用。该技术在智能交通和城市发展领域的应用前景十分广阔。
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Intelligent extraction of road cracks based on vehicle laser point cloud and panoramic sequence images

In light of the limited efficacy of conventional methods for identifying pavement cracks and the absence of comprehensive depth and location data in two-dimensional photographs, this study presents an intelligent strategy for extracting road cracks. This methodology involves the integration of laser point cloud data obtained from a vehicle-mounted system and a panoramic sequence of images. The study employs a vehicle-mounted LiDAR measurement system to acquire laser point cloud and panoramic sequence image data simultaneously. A convolutional neural network is utilized to extract cracks from the panoramic sequence image. The extracted sequence image is then aligned with the laser point cloud, enabling the assignment of RGB information to the vehicle-mounted three dimensional (3D) point cloud and location information to the two dimensional (2D) panoramic image. Additionally, a threshold value is set based on the crack elevation change to extract the aligned roadway point cloud. The three-dimensional data pertaining to the cracks can be acquired. The experimental findings demonstrate that the use of convolutional neural networks has yielded noteworthy outcomes in the extraction of road cracks. The utilization of point cloud and image alignment techniques enables the extraction of precise location data pertaining to road cracks. This approach exhibits superior accuracy when compared to conventional methods. Moreover, it facilitates rapid and accurate identification and localization of road cracks, thereby playing a crucial role in ensuring road maintenance and traffic safety. Consequently, this technique finds extensive application in the domains of intelligent transportation and urbanization development. The technology exhibits significant promise for use in the domains of intelligent transportation and city development.

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