绘制作为可测量城市身份的地方感:利用街景图像和机器学习识别建筑立面材料

IF 2.6 3区 经济学 Q2 ENVIRONMENTAL STUDIES
Xinghan Chen, Xiangwen Ding, Yu Ye
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引用次数: 0

摘要

地方感作为一种无形的感知,被广泛认为是一种城市特征,在跨文化研究和当代城市化中都具有重要价值。建筑立面材料由于结合了物理和社会属性,可以有效捕捉地方感。然而,目前还没有可广泛实施的高分辨率方法来大规模识别建筑立面材料。为此,本研究提出了一种使用街景图像(SVI)和一组深度卷积神经网络(CNN)来识别建筑立面材料的方法。具体来说,我们建立了一个大型跨文化训练集,以提高普适性。SVI 中的建筑物被划分为高分辨率矩形图像,并使用训练有素的残差网络-50(ResNet-50)模型进行分类。然后,通过测量外立面材料和分析指标(包括多样性和连续性)来描述地方感及其空间模式。研究考察了全球八个具有独特城市特征的城市。研究结果表明,与亚洲城市相比,纽约、芝加哥和伦敦具有相似性,而巴黎和东京则更具特色。虽然在全面衡量地方感方面仍存在挑战,但对建筑外立面材料的分析提供了一个具有洞察力的指标,有助于增强当代城市化的城市认同感。这项研究不仅通过智能算法的赋能促进了城市科学的精细化发展,还为基于客观物理环境探索不可测量的特质引入了新的视角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mapping sense of place as a measurable urban identity: Using street view images and machine learning to identify building façade materials
Sense of place, as an intangible perception, is widely recognized as an urban identity and of great value in both cross-cultural studies and contemporary urbanism. Building façade material can effectively capture sense of place due to its combination of physical and social attributes. Nevertheless, there are no widely implementable and high-resolution approaches to identify façade materials on a large scale. As a response, this study proposes a method using street view images (SVIs) and a set of deep Convolutional Neural Networks (CNNs) to identify building façade materials. Specifically, a large cross-cultural training set was built to promote generalizability. Buildings within SVIs were divided into high-resolution rectangular images and classified using a well-trained Residual Network-50 (ResNet-50) model. Sense of place and its spatial patterns were then depicted by measuring façade material and analytical indicators including diversity and continuity. Eight cities worldwide with distinctive urban identities were examined. The findings revealed that compared to Asian cities, New York City, Chicago, and London are similar, while Paris and Tokyo are more distinctive. While challenges persist in comprehensively measuring the sense of place, the analysis of façade materials offers an insightful indicator that can assist in enhancing urban identity for contemporary urbanism. This study not only promotes the fine development of urban science through the empowerment of intelligent algorithms but also introduces a new perspective on exploring unmeasurable qualities based on the objective physical environment.
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来源期刊
CiteScore
6.10
自引率
11.40%
发文量
159
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