Automated heritage building component recognition and modelling based on local features

IF 3.5 2区 综合性期刊 0 ARCHAEOLOGY
Bo Pang , Jian Yang , Tian Xia , Anshan Zhang , Kai Zhang , Qingfeng Xu , Feiliang Wang
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引用次数: 0

Abstract

The maintenance of buildings, underpinned by the digital twin technique, becomes integral to heritage conservation efforts. To achieve efficient modelling with minimal manual intervention, automated component recognition based on semantic segmentation of point clouds is imperative. Confronted by the challenges of the paucity of requisite datasets and the inherent geometric diversity of historical buildings, a two-step strategy including feature extraction and classification is proposed. First, an improved SHOT descriptor is proposed to extract discriminative features by defining a specific local reference system and concatenating support fields at different scales. The extracted features are then classified with a learning-based network, avoiding a feature learning process that relies on sufficient data. Experiments on real-world heritage point clouds yield 93.7% accuracy and an 80.0% mean-intersection-over-union (mIoU) when descriptors with radii of 0.3 m and 0.9 m are combined, surpassing computationally expensive deep learning networks and data-intensive unsupervised learning. A slight decrease in segmentation performance with random removal of points indicates the high robustness of the proposed method against data missing and sampling density changes. Additionally, a geometric modelling process with an error of less than 10% is introduced to achieve a direct transition from point cloud to model, contributing to the establishment of digital twins for heritage structures.
基于局部特征的文物建筑构件自动识别与建模
以数字孪生技术为基础的建筑维护成为遗产保护工作不可或缺的一部分。为了以最少的人工干预实现高效的建模,基于点云语义分割的自动化构件识别势在必行。针对历史建筑所需数据集缺乏和其固有的几何多样性的挑战,提出了一种特征提取和分类两步策略。首先,提出了一种改进的SHOT描述符,通过定义特定的局部参考系统和连接不同尺度的支持域来提取判别特征;然后使用基于学习的网络对提取的特征进行分类,避免了依赖于足够数据的特征学习过程。当半径为0.3 m和0.9 m的描述符组合在一起时,对现实世界遗产点云的实验产生了93.7%的准确率和80.0%的平均相交-过联合(mIoU),超过了计算成本高昂的深度学习网络和数据密集型无监督学习。随机去除点的分割性能略有下降,表明该方法对数据缺失和采样密度变化具有很高的鲁棒性。此外,引入了误差小于10%的几何建模过程,实现了从点云到模型的直接过渡,有助于建立遗产结构的数字双胞胎。
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来源期刊
Journal of Cultural Heritage
Journal of Cultural Heritage 综合性期刊-材料科学:综合
CiteScore
6.80
自引率
9.70%
发文量
166
审稿时长
52 days
期刊介绍: The Journal of Cultural Heritage publishes original papers which comprise previously unpublished data and present innovative methods concerning all aspects of science and technology of cultural heritage as well as interpretation and theoretical issues related to preservation.
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