非结构化三维点云的轮廓检测

Timo Hackel, J. D. Wegner, K. Schindler
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引用次数: 146

摘要

我们描述了一种在大规模室外点云中自动检测轮廓的方法,即沿表面方向急剧变化的线。等高线是构建点云并将其转化为高质量曲面或实体模型的重要中间特征,在图形和测绘应用中得到了广泛的应用。然而,在非结构化、非均匀的点云中检测它们是非常困难的,现有的线检测算法在很大程度上失败了。我们将轮廓提取作为一个两阶段判别学习问题。在第一阶段,使用从点的邻域提取的一组特征,用二值分类器预测每个单独点的轮廓分数。轮廓分数作为构建候选轮廓的过完备图的基础。第二阶段从候选轮廓中选择一组最优轮廓。这相当于在高阶MRF中进一步的二元分类,其派系编码对连接轮廓的偏好,并惩罚松散的末端。该方法可以在几分钟内处理107个点云,并且大大优于在点云的范围图像表示上执行canny风格边缘检测的基线。
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Contour Detection in Unstructured 3D Point Clouds
We describe a method to automatically detect contours, i.e. lines along which the surface orientation sharply changes, in large-scale outdoor point clouds. Contours are important intermediate features for structuring point clouds and converting them into high-quality surface or solid models, and are extensively used in graphics and mapping applications. Yet, detecting them in unstructured, inhomogeneous point clouds turns out to be surprisingly difficult, and existing line detection algorithms largely fail. We approach contour extraction as a two-stage discriminative learning problem. In the first stage, a contour score for each individual point is predicted with a binary classifier, using a set of features extracted from the point's neighborhood. The contour scores serve as a basis to construct an overcomplete graph of candidate contours. The second stage selects an optimal set of contours from the candidates. This amounts to a further binary classification in a higher-order MRF, whose cliques encode a preference for connected contours and penalize loose ends. The method can handle point clouds > 107 points in a couple of minutes, and vastly outperforms a baseline that performs Canny-style edge detection on a range image representation of the point cloud.
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