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Path voting based pavement crack detection from laser range images

机译:从激光测距图像中基于路径投票的路面裂缝检测

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Due to illumination variations, cast shadows, and pavement stains, etc., traditional optical imaging has limitations in capturing and representing pavement cracks. In this work, laser imaging techniques are used to model the pavement surface with point clouds, where crack points hold relatively lower range values than their non-crack neighbors. To extract cracks from laser range images, a two-level grouping approach is proposed. First, local grouping is performed by a novel segmentation-based path voting algorithm. The proposed path voting is equipped with an adapted normalized-cut algorithm which purposely bi-partitions an image patch along the potential crack path. Then in a global grouping, crack seeds are sampled and fed into a graph representation, in which spanning tree and tree pruning algorithms are employed to extract the final cracks in a global view. Experimental results demonstrate the effectiveness of the proposed approach.
机译:由于光照变化,投射阴影和路面污渍等,传统的光学成像在捕获和表示路面裂缝方面存在局限性。在这项工作中,使用激光成像技术对具有点云的人行道表面进行建模,其中裂纹点比其非裂纹邻居具有相对较低的范围值。为了从激光测距图像中提取裂纹,提出了一种二级分组方法。首先,通过一种新颖的基于分段的路径投票算法执行局部分组。拟议中的路径投票配备了一种适应性归一化算法,该算法有意沿着潜在裂缝路径对图像块进行了双向分割。然后,在全局分组中,对裂纹种子进行采样并送入图形表示中,其中采用生成树和树修剪算法来提取全局视图中的最终裂纹。实验结果证明了该方法的有效性。

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