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Unsupervised and Notation-Independent Wall Segmentation in Floor Plans Using a Combination of Statistical and Structural Strategies

机译:结合统计和结构策略在楼层平面图中进行无监督和独立于符号的墙分割

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In this paper we present a wall segmentation approach in floor plans that is able to work independently to the graphical notation, does not need any pre-annotated data for learning, and is able to segment multiple-shaped walls such as beams and curved-walls. This method results from the combination of the wall segmentation approaches presented recently by the authors. Firstly, potential straight wall segments are extracted in an unsupervised way similar to, but restricting even more the wall candidates considered in the original approach. Then, based on, these segments are used to learn the texture pattern of walls and spot the lost instances. The presented combination of both methods has been tested on 4 available datasets with different notations and compared qualitatively and quantitatively to the state-of-the-art applied on these collections. Additionally, some qualitative results on floor plans directly downloaded from the Internet are reported in the paper. The overall performance of the method demonstrates either its adaptability to different wall notations and shapes, and to document qualities and resolutions.
机译:在本文中,我们提出了一种平面图中的墙分割方法,该方法能够独立于图形符号工作,不需要任何预先注释的数据即可学习,并且能够分割多种形状的墙,例如梁和弯曲墙。该方法是作者最近提出的墙分割方法的组合产生的。首先,潜在的直墙段以类似于但不限制原始方法中考虑的墙候选的无监督方式提取。然后,基于这些片段,可以了解墙壁的纹理图案并发现丢失的实例。所提出的两种方法的组合已经在4个可用的具有不同符号的数据集上进行了测试,并在质量和数量上与应用于这些集合的最新技术进行了比较。此外,本文还报告了直接从Internet下载的平面图的一些定性结果。该方法的整体性能证明了其对不同墙壁符号和形状的适应性,以及对文件质量和分辨率的适应性。

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