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Skewness balancing algorithm for approximation of discrete objects boundaries

机译:离散对象边界近似的偏移平衡算法

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Object boundary is an important feature for image processing and computer vision applications. In this paper a new method for extracting the non convex boundaries of an object represented by 2D point clouds is established. In order to determine the object boundaries we started by constructing the convex-hull-based Delaunay triangulation using the point clouds. Given the fact that the points are sampled from the object surface using an instrument such as cameras or laser scanners, the distribution of the edges lengths belonging to the objects follows a Gaussian distribution. However this distribution is skewed due to the existence of long edges introduced by the Delaunay triangulation. Removing the skewness will make the convex boundary built by the Delauny algorithm converge to the real boundary of the object. We tested our method using different datasets that includes synthetic data, urban LiDAR (Light Detection and Ranging) data, and binary images. The results show that the proposed method successfully extracts the object boundary.
机译:对象边界是图像处理和计算机视觉应用的重要特征。本文建立了一种提取由2D点云表示的对象的非凸边界的新方法。为了确定我们开始使用点云构造基于凸壳的Delaunay三角测量的对象边界。鉴于使用诸如相机或激光扫描仪的仪器从物体表面采样点,所以属于对象的边缘长度的分布遵循高斯分布。然而,由于Delaunay三角测量的长边缘存在,这种分布是倾斜的。删除Skewness将使Delauny算法构建的凸边界会聚到对象的实际边界。我们使用包括合成数据,城市激光雷达(光检测和测距)数据和二进制图像的不同数据集进行了测试。结果表明,该方法成功提取了对象边界。

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