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A Pothole Detection Method Based On 3D Point Cloud Segmentation

机译:基于3D点云分割的坑洼检测方法

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Road potholes affect comfort, safety, traffic condition and vehicle stability. Accurately detecting these potholes is vital for assessing the degree of pavement distress and developing road maintenance plan accordingly. This paper proposes a simple and effective pothole detection method based on 3D point cloud segmentation. Using binocular stereo vision to acquire 3D point clouds, fitting the pavement plane and then eliminating it from the 3D point clouds of road scene, we could roughly extract the pothole. K-means clustering and region growing algorithms were adopted to extract the potholes precisely. The experimental results demonstrate that our proposed method has a very good segmentation effect on scenes involving plane and target object.
机译:道路坑洼会影响舒适度,安全性,交通状况和车辆稳定性。准确地检测这些坑洼对于评估路面窘迫程度并据此制定道路养护计划至关重要。提出了一种基于3D点云分割的简便有效的坑洼检测方法。使用双目立体视觉获取3D点云,拟合路面平面,然后将其从道路场景的3D点云中消除,我们可以大致提取坑洼。采用K均值聚类和区域增长算法来精确提取坑洞。实验结果表明,本文提出的方法对涉及平面和目标物体的场景具有很好的分割效果。

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