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A graph edit dictionary for correcting errors in roof topology graphs reconstructed from point clouds

机译:图形编辑字典,用于校正从点云重建的屋顶拓扑图中的错误

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In the task of 3D building model reconstruction from point clouds we face the problem of recovering a roof topology graph in the presence of noise, small roof faces and low point densities. Errors in roof topology graphs will seriously affect the final modelling results. The aim of this research is to automatically correct these errors. We define the graph correction as a graph-to-graph problem, similar to the spelling correction problem (also called the string-to-string problem). The graph correction is more complex than string correction, as the graphs are 2D while strings are only 1D. We design a strategy based on a dictionary of graph edit operations to automatically identify and correct the errors in the input graph. For each type of error the graph edit dictionary stores a representative erroneous subgraph as well as the corrected version. As an erroneous roof topology graph may contain several errors, a heuristic search is applied to find the optimum sequence of graph edits to correct the errors one by one. The graph edit dictionary can be expanded to include entries needed to cope with errors that were previously not encountered. Experiments show that the dictionary with only fifteen entries already properly corrects one quarter of erroneous graphs in about 4500 buildings, and even half of the erroneous graphs in one test area, achieving as high as a 95% acceptance rate of the reconstructed models.
机译:从点云重建3D建筑模型的任务中,我们面临着在存在噪声,小屋顶面和低点密度的情况下恢复屋顶拓扑图的问题。屋顶拓扑图中的错误将严重影响最终的建模结果。这项研究的目的是自动纠正这些错误。我们将图校正定义为图到图问题,类似于拼写校正问题(也称为字符串到字符串问题)。图形校正比字符串校正更复杂,因为图形是2D,而字符串只有1D。我们基于图编辑操作字典设计策略,以自动识别和纠正输入图中的错误。对于每种类型的错误,图编辑词典都会存储代表性的错误子图以及更正的版本。由于错误的屋顶拓扑图可能包含多个错误,因此将应用启发式搜索来找到图编辑的最佳顺序,以逐一纠正错误。可以将图形编辑字典扩展为包括处理先前未遇到的错误所需的条目。实验表明,只有15个条目的字典已经正确校正了大约4500座建筑物中的四分之一的错误图,甚至纠正了一个测试区域中一半的错误图,从而达到了重建模型接受率的95%的高水平。

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