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Supervoxel-based saliency detection for large-scale colored 3D point clouds

机译:基于Supervoxel的显着性检测用于大型彩色3D点云

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Large-scale 3D point clouds have been actively used in many applications with the advent of capturing devices. In this paper, we propose a novel saliency detection algorithm for large-scale colored 3D point clouds which capture real-world scenes. We first voxelize an input point cloud, and then partition voxels into a supervoxel which corresponds to a clusters at the lowest level. We construct the supervoxel cluster hierarchy iteratively, where a high level cluster includes low level clusters which exhibit similar features to each other. We also estimate the saliency at each cluster by computing the distinctness of geometric and color features based on center-surround contrast. By averaging the multiscale saliency maps obtained at different levels of clusters, we obtain final saliency distribution. Experimental results demonstrate that the proposed algorithm extracts globally and locally salient regions from large-scale colored 3D point clouds faithfully by employing the geometric and photometric features together.
机译:随着捕获设备的出现,大规模3D点云已在许多应用中得到积极使用。在本文中,我们针对捕获现实世界场景的大规模彩色3D点云提出了一种新颖的显着性检测算法。我们首先对输入点云进行体素化,然后将体素划分为对应于最低级别群集的超体素。我们迭代地构造超体素群集层次结构,其中高级群集包括表现出相似特征的低级群集。我们还通过基于中心周围对比度计算几何和颜色特征的差异来估计每个群集的显着性。通过平均在不同级别的群集上获得的多尺度显着性图,我们获得最终显着性分布。实验结果表明,该算法通过结合几何和光度学特征,忠实地从大规模彩色3D点云中提取全局和局部显着区域。

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