从三维测量数据到bim到bem: incube数据集

Q2 Social Sciences
O. Roman, E. M. Farella, S. Rigon, F. Remondino, S. Ricciuti, D. Viesi
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引用次数: 0

摘要

摘要近年来,基于3D现实测量的传感器和方法的改进,以指数方式增强了创建真实世界数字复制品的可能性。激光雷达技术和摄影测量是目前收集不同尺度室内和室外环境三维几何信息的标准方法。这些信息可能成为更广泛的处理工作流程的一部分,从3D调查数据开始,通过建筑信息模型(BIM)生成,导致对建筑物特征和行为的更复杂分析(图1)。然而,创建BIM模型,特别是历史和遗产资产(HBIM),仍然是资源密集型和耗时的,因为需要手工创建和丰富数据。改进3D数据处理、互操作性和BIM生成过程的自动化是一些趋势研究主题,基准数据集在评估这些范围内新开发的算法和方法方面非常有帮助。本文介绍了最近资助的欧盟InCUBE项目活动产生的InCUBE数据集,重点是通过有效的建筑环境管理(包括使用创新的可再生能源技术和数字化)的综合战略和流程来解锁欧盟建筑改造。该数据集收集了为Trento(意大利)Santa Chiara区的意大利演示站点制作的原始和处理过的数据。共享数据的多样性使多种可能的用途、调查和开发成为可能,其中一些在本贡献中有所介绍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FROM 3D SURVEYING DATA TO BIM TO BEM: THE INCUBE DATASET
Abstract. In recent years, the improvement of sensors and methodologies for 3D reality-based surveying has exponentially enhanced the possibility of creating digital replicas of the real world. LiDAR technologies and photogrammetry are currently standard approaches for collecting 3D geometric information of indoor and outdoor environments at different scales. This information can potentially be part of a broader processing workflow that, starting from 3D surveyed data and through Building Information Models (BIM) generation, leads to more complex analyses of buildings’ features and behavior (Figure 1). However, creating BIM models, especially of historic and heritage assets (HBIM), is still resource-intensive and time-consuming due to the manual efforts required for data creation and enrichment. Improve 3D data processing, interoperability, and the automation of the BIM generation process are some of the trending research topics, and benchmark datasets are extremely helpful in evaluating newly developed algorithms and methodologies for these scopes. This paper introduces the InCUBE dataset, resulting from the activities of the recently funded EU InCUBE project, focused on unlocking the EU building renovation through integrated strategies and processes for efficient built-environment management (including the use of innovative renewable energy technologies and digitalization). The set of data collects raw and processed data produced for the Italian demo site in the Santa Chiara district of Trento (Italy). The diversity of the shared data enables multiple possible uses, investigations and developments, and some of them are presented in this contribution.
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来源期刊
CiteScore
1.70
自引率
0.00%
发文量
949
审稿时长
16 weeks
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