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Semantic Labeling and Instance Segmentation of 3D Point Clouds Using Patch Context Analysis and Multiscale Processing

机译:使用补丁上下文分析和多尺度处理3D点云的语义标记和实例分割

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摘要

We present a novel algorithm for semantic segmentation and labeling of 3D point clouds of indoor scenes, where objects in point clouds can have significant variations and complex configurations. Effective segmentation methods decomposing point clouds into semantically meaningful pieces are highly desirable for object recognition, scene understanding, scene modeling, etc. However, existing segmentation methods based on low-level geometry tend to either under-segment or over-segment point clouds. Our method takes a fundamentally different approach, where semantic segmentation is achieved along with labeling. To cope with substantial shape variation for objects in the same category, we first segment point clouds into surface patches and use unsupervised clustering to group patches in the training set into clusters, providing an intermediate representation for effectively learning patch relationships. During testing, we propose a novel patch segmentation and classification framework with multiscale processing, where the local segmentation level is automatically determined by exploiting the learned cluster based contextual information. Our method thus produces robust patch segmentation and semantic labeling results, avoiding parameter sensitivity. We further learn object-cluster relationships from the training set, and produce semantically meaningful object level segmentation. Our method outperforms state-of-the-art methods on several representative point cloud datasets, including S3DIS, SceneNN, Cornell RGB-D and ETH.
机译:我们提出了一种新颖的用于室内场景的语义分割和标记的新颖算法,其中点云中的对象可以具有显着的变化和复杂的配置。有效的分割方法对对象识别,场景理解,场景建模等非常理想地将点云分解成语义上有意义的作品。然而,基于低电平几何体的现有分段方法倾向于段段或过度段云。我们的方法采用了根本不同的方法,其中语义分割与标签一起实现。为了应对同一类别中对象的实质性变化,我们将段点云分段为曲面覆盖,并使用无监督的聚类来将培训中的培训中的分组组修补程序组成,提供用于有效学习补丁关系的中间表示。在测试期间,我们提出了一种具有多尺度处理的新颖补丁分段和分类框架,其中通过利用基于学习的集群的上下文信息来自动确定本地分段级别。因此,我们的方法产生了稳健的补丁分段和语义标记结果,避免了参数灵敏度。我们进一步从训练集中学习对象群集关系,并生成语义有意义的对象级别分段。我们的方法优于几个代表点云数据集的最先进的方法,包括S3DIS,SCONN,CORNELL RGB-D和ETH。

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