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Feature extraction of point clouds based on region clustering segmentation

机译:基于区域聚类分割的点云特征提取

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This paper proposes a feature extraction method for scattered point clouds. First, a clustering algorithm is used to divide point clouds into different regions that represent the original features. In each sub-region, we calculate the angles between the directed line segments from sampling points to the neighborhood points and set the angle threshold to identify edge feature points of uniform distribution. For the edge points of non-uniform distribution, we introduce the local neighborhood size as a discrete scale parameter for edge point detection, and then accurately identify and record the detected edge points. Then, according to the mean curvature of point clouds, the local feature weights of sampling points in the sub-region are calculated so that potential sharp feature points in a local area are detected. Finally, a minimum spanning tree of feature points is established to construct connected regions and generate feature point sets. A Bidirectional Principal Component Analysis (BD-PCA) search method is used to trim and break the small branches and multiline segments to generate feature curves. We carried out experiments on point cloud models with different densities to verify the effectiveness and superiority of our method. Results show that the edge features and sharp features are effectively extracted, and our method is not affected by the noise, neighborhood scale, or quality of sampling.
机译:本文提出了一种用于散射点云的特征提取方法。首先,群集算法用于将点云划分为代表原始功能的不同区域。在每个子区域中,我们计算从采样点到邻域点的指向线段之间的角度,并设定角度阈值以识别均匀分布的边缘特征点。对于非均匀分布的边缘点,我们将本地邻域大小作为边缘点检测的离散比例参数介绍,然后精确地识别并记录检测到的边缘点。然后,根据点云的平均曲率,计算子区域中的采样点的局部特征权重,从而检测局部区域中的潜在尖锐特征点。最后,建立一个特征点的最小生成树以构建连接区域并生成特征点集。双向主成分分析(BD-PCA)搜索方法用于修剪和打破小分支和多线段以生成特征曲线。我们对具有不同密度的点云模型进行了实验,以验证我们方法的有效性和优越性。结果表明,边缘特征和尖锐的功能得到有效提取,我们的方法不受噪声,邻域刻度或采样质量的影响。

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