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Segmentation of point clouds via joint semantic and geometric features for 3D modeling of the built environment

机译:通过联合语义和几何特征分割点云,为建筑环境3D建模

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摘要

Generating 3D models from point cloud data is a common Virtual Design and Construction (VDC) service. Research has focused on automating several key steps, including segmenting point clouds based on appearance and geometric attributes. These methods dominantly use Manhattan-World assumptions in their approach. Hence, in cases where building systems are close to architectural/structural elements, these methods result in over-segmentation and require significant fine-tuning by the users. To overcome these limitations, this paper presents a learning method based on Markov Random Field (MRF) that assigns semantic labels to point cloud segment. The MRF enforces coherence between the semantic (e.g., beam, column, wall, ceiling, floor, pipe) and geometric labels (e.g., horizontal, vertical, cylindrical), and it uses the neighborhood context to enhance the semantic labeling accuracy. Experimental results show an average accuracy of 90% on semantic labeling, achieving state-of-the-art performance on labeling beam, ceiling, column, floor, pipe, and wall elements.
机译:从点云数据生成3D模型是一个常见的虚拟设计和构造(VDC)服务。研究专注于自动化几个关键步骤,包括基于外观和几何属性的分段点云。这些方法在他们的方法中占据了曼哈顿世界的假设。因此,在构建系统接近架构/结构元素的情况下,这些方法导致过分分割,并且需要用户显着的微调。为了克服这些限制,本文提出了一种基于Markov随机字段(MRF)的学习方法,该方法将语义标签分配给点云段。 MRF在语义(例如,梁,柱,墙壁,天花板,地板,管道)和几何标签之间强制连贯(例如,水平,垂直,圆柱形),并且它使用邻域背景来增强语义标记精度。实验结果显示了语义标签的平均精度为90%,在标签梁,天花板,柱,地板,管道和墙壁元件上实现最先进的性能。

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