Object Partitioning Using Local Convexity

S. Stein, Markus Schoeler, Jeremie Papon, F. Wörgötter
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引用次数: 163

Abstract

The problem of how to arrive at an appropriate 3D-segmentation of a scene remains difficult. While current state-of-the-art methods continue to gradually improve in benchmark performance, they also grow more and more complex, for example by incorporating chains of classifiers, which require training on large manually annotated data-sets. As an alternative to this, we present a new, efficient learning- and model-free approach for the segmentation of 3D point clouds into object parts. The algorithm begins by decomposing the scene into an adjacency-graph of surface patches based on a voxel grid. Edges in the graph are then classified as either convex or concave using a novel combination of simple criteria which operate on the local geometry of these patches. This way the graph is divided into locally convex connected subgraphs, which -- with high accuracy -- represent object parts. Additionally, we propose a novel depth dependent voxel grid to deal with the decreasing point-density at far distances in the point clouds. This improves segmentation, allowing the use of fixed parameters for vastly different scenes. The algorithm is straightforward to implement and requires no training data, while nevertheless producing results that are comparable to state-of-the-art methods which incorporate high-level concepts involving classification, learning and model fitting.
使用局部凸性的对象分区
如何对场景进行适当的3d分割仍然是一个难题。虽然当前最先进的方法在基准性能方面继续逐步提高,但它们也变得越来越复杂,例如通过合并分类器链,这需要在大型手动注释数据集上进行训练。作为替代方案,我们提出了一种新的,高效的学习和无模型的方法,用于将3D点云分割为物体部分。该算法首先将场景分解为基于体素网格的表面补丁的邻接图。然后使用一组新的简单准则将图中的边分类为凸或凹,这些准则对这些斑块的局部几何结构进行操作。通过这种方式,图被划分为局部凸连接子图,这些子图以高精度表示对象部分。此外,我们提出了一种新的深度依赖体素网格来处理点云中远距离点密度下降的问题。这改善了分割,允许对不同场景使用固定参数。该算法易于实现,不需要训练数据,但产生的结果可与最先进的方法相媲美,这些方法包含了涉及分类、学习和模型拟合的高级概念。
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