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Automatic segmentation of point clouds from multi-view reconstruction using graph-cut

机译:使用图割从多视图重建中自动分割点云

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In multi-view reconstruction systems, the recovered point cloud often consists of numerous unwanted background points. We propose a graph-cut based method for automatically segmenting point clouds from multi-view reconstruction. Based on the observation that the object of interest is likely to be central to the intended multi-view images, our method requires no user interaction except two roughly estimated parameters of objects covering in the central area of images. The proposed segmentation process is carried out in two steps: first, we build a weighted graph whose nodes represent points and edges that connect each point to its k-nearest neighbors. The potentials of each point being object and background are estimated according to distances between its projections in images and the corresponding image centers. The pairwise potentials between each point and its neighbors are computed according to their positions, colors and normals. Graph-cut optimization is then used to find the initial binary segmentation of object and background points. Second, to refine the initial segmentation, Gaussian mixture models (GMMs) are created from the color and density features of points in object and background classes, respectively. The potentials of each point being object and background are re-calculated based on the learned GMMs. The graph is updated and the segmentation of point clouds is improved by graph-cut optimization. The second step is iterated until convergence. Our method requires no manual labeling points and employs available information of point clouds from multi-view systems. We test the approach on real-world data generated by multi-view reconstruction systems.
机译:在多视图重建系统中,恢复的点云通常包含许多不需要的背景点。我们提出了一种基于图割的方法,用于从多视图重建中自动分割点云。基于观察到的关注对象可能是预期的多视图图像的中心,我们的方法不需要用户交互,只需要覆盖图像中心区域的两个粗略估计的对象参数即可。拟议的分割过程分两个步骤进行:首先,我们建立一个加权图,该图的节点表示将每个点连接到其k最近邻的点和边。根据对象在图像中的投影与相应图像中心之间的距离,可以估算出每个对象(物体和背景)的电位。根据它们的位置,颜色和法线计算每个点及其相邻点之间的成对电位。然后使用图割优化来查找对象和背景点的初始二进制分割。其次,为了完善初始分割,分别根据对象和背景类别中点的颜色和密度特征创建了高斯混合模型(GMM)。根据学习到的GMM,重新计算每个点作为对象和背景的电势。通过图切割优化,可以更新图并改善点云的分割。第二步反复进行,直到收敛为止。我们的方法不需要手动标记点,并使用了来自多视图系统的点云的可用信息。我们对由多视图重建系统生成的真实数据进行测试。

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