基于神经网络的建筑信息模型形状分类

I. Evangelou, N. Vitsas, Georgios Papaioannou, Manolis Georgioudakis, A. Chatzisymeon
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引用次数: 1

摘要

在大型土木工程项目的设计、规划、成本估算和施工阶段,建筑信息模型(BIM)程序引入了建筑行业广泛使用的规范和数据交换格式,以描述建筑结构的功能和几何元素。在本文中,我们解释了如何将一种现代的、低参数的、基于神经网络的分类解决方案应用于BIM的自动几何元素标记,这在建筑行业的软件解决方案中正成为越来越重要的任务。该网络的设计使其能够提取每个BIM元素的一般形状、尺度和纵横比的特征,并且在训练和预测过程中速度非常快。我们在真实的BIM数据集上评估了我们的网络架构,并展示了使用通用3D形状分类网络难以实现的准确性。•计算方法→神经网络;形状分析;
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Shape Classification of Building Information Models using Neural Networks
The Building Information Modelling (BIM) procedure introduces specifications and data exchange formats widely used by the construction industry to describe functional and geometric elements of building structures in the design, planning, cost estimation and construction phases of large civil engineering projects. In this paper we explain how to apply a modern, low-parameter, neural-network-based classification solution to the automatic geometric BIM element labeling, which is becoming an increasingly important task in software solutions for the construction industry. The network is designed so that it extracts features regarding general shape, scale and aspect ratio of each BIM element and be extremely fast during training and prediction. We evaluate our network architecture on a real BIM dataset and showcase accuracy that is difficult to achieve with a generic 3D shape classification network. CCS Concepts • Computing methodologies → Neural networks; Shape analysis;
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