一种公寓式建筑物三维产权群集自动构建方法

A Method for Constructing Automatically 3D Property Right Cluster for Apartment Buildings

  • 摘要: 建筑物在不同视角下分为物理群集和产权群集,后者依附于前者。现有的群集对象构建方法可以自动地构建同一栋建筑物的物理群集和产权群集,但生成的两个群集相互独立。这不仅增加建模成本,也不利于后期模型数据的更新和维护。针对该问题,研究公寓式建筑物物理群集与产权群集的关系,发现连通边界的层级性决定了胞腔聚合的产权体,提出了一种将物理群集自动转换为产权群集的方法。该方法在已有物理群集基础上,利用庞加莱对偶变换,将物理群集的胞腔转换为对偶点、胞腔之间的连通边界转换为边、物理群集转换为节点关系图。设计节点关系图分割算法,根据边的语义信息将节点关系图分割为表示专有和共有产权体的子节点关系图。进一步提取子节点关系图对应胞腔集的非公共边界面构建产权体,产权体的聚合形成产权群集。该方法不再构建两个独立的群集,而是仅构建物理群集,然后通过转换方法生成产权群集。结果表明,该方法能在已有物理群集中自动找出产权体并构建产权群集,节约了建模成本,便于后期数据的更新和维护。

     

    Abstract:
      Objectives  Buildings can be divided into physical cluster and property right cluster from different perspectives, and the latter attached to the former. The existing methods can construct physical cluster and property right cluster of the same building automatically, but the two resulting clusters are independent of each other. This not only increases the cost of modeling, but also is not conducive to the update and maintenance of model data in the later period.
      Methods  For the problem, we study the relationship between physical cluster and property right cluster of apartment buildings, and find that the hierarchy of connected boundaries determines the property right solids aggregated by cells, and present a method to transform physical clustering into property right clustering automatically. With existing physical clusters, the method transforms the cells of physical clusters into dual points, and the connected boundaries between cells into semantic edges, and the whole physical cluster into node relation graph with Poincaré duality transformation. A segmenting algorithm is designed for node relation graph, which can divide node relation graph into sub node relation graph representing proprietary and co-owned property according to the semantic information of the edges. Furthermore, the non-common boundary surfaces of the cell set corresponded by sub node relation graph are extracted to construct the property right solids, and the aggregation of the property right solids forms the property right cluster.
      Results  Instead of building two separate clusters, the proposed method only builds a physical cluster and property right cluster is generated by the transformation.
      Conclusions  The results show that the proposed method can identify the property right solids and construct property right cluster in the existing physical cluster automatically. It saves the modeling cost and facilitates the update and maintenance of the later data.

     

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