Decay detection in historic buildings through image-based deep learning

IF 0.4 0 ARCHITECTURE
S. Bruno, R. Galantucci, A. Musicco
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引用次数: 4

Abstract

Nowadays, built heritage condition assessment is realized through on-site or photo-aided visual inspections, reporting pathologies manually on drawings, photographs, notes. The knowledge of the state of conservation goes through subjective and time or cost consuming procedures. This is even relevant for a historic building characterized by geometrical and morphological complexity and huge extension, or at risk of collapse. In this context, advancements in the field of Computer Vision and Artificial Intelligence provide an opportunity to address these criticalities. The proposed methodology is based on a Mask R-CNN model, for the detection of decay morphologies on built heritages, and, particularly on historic buildings. The experimentation has been carried out and validated on a highly heterogeneous dataset of images of historic buildings, representative of the regional Architectural Heritage, such as: castles, monasteries, noble buildings, rural buildings. The outcomes highlighted the significance of this remote, non-invasive inspection technique, in support of the technicians in the preliminary knowledge of the building state of conservation, and, most of all, in the decay mapping of some particular classes of alterations (moist area, biological colonization).
基于图像深度学习的历史建筑腐朽检测
如今,建筑遗产的状况评估是通过现场或照片辅助的视觉检查来实现的,在图纸、照片、笔记上手工报告病理。对保护状态的认识要经过主观的、耗费时间或成本的过程。这甚至与具有几何和形态复杂性和巨大延伸或有倒塌风险的历史建筑相关。在这种背景下,计算机视觉和人工智能领域的进步为解决这些关键问题提供了机会。提出的方法是基于Mask R-CNN模型,用于检测建筑遗产,特别是历史建筑的腐烂形态。实验在一个高度异构的历史建筑图像数据集上进行并验证,这些图像具有区域建筑遗产的代表性,例如:城堡,修道院,贵族建筑,乡村建筑。结果强调了这种远程、非侵入性检查技术的重要性,它支持技术人员对建筑保护状态的初步了解,最重要的是,在某些特定类型的变化(潮湿区域、生物殖民化)的衰减图中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.10
自引率
12.50%
发文量
9
审稿时长
20 weeks
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