Perceptible landscape patterns reveal invisible socioeconomic profiles of cities

IF 18.8 1区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
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Abstract

Urban landscape is directly perceived by residents and is a significant symbol of urbanization development. A comprehensive assessment of urban landscapes is crucial for guiding the development of inclusive, resilient, and sustainable cities and human settlements. Previous studies have primarily analyzed two-dimensional landscape indicators derived from satellite remote sensing, potentially overlooking the valuable insights provided by the three-dimensional configuration of landscapes. This limitation arises from the high cost of acquiring large-area three-dimensional data and the lack of effective assessment indicators. Here, we propose four urban landscapes indicators in three dimensions (UL3D): greenness, grayness, openness, and crowding. We construct the UL3D using 4.03 million street view images from 303 major cities in China, employing a deep learning approach. We combine urban background and two-dimensional urban landscape indicators with UL3D to predict the socioeconomic profiles of cities. The results show that UL3D indicators differs from two-dimensional landscape indicators, with a low average correlation coefficient of 0.31 between them. Urban landscapes had a changing point in 2018–2019 due to new urbanization initiatives, with grayness and crowding rates slowing, while openness increased. The incorporation of UL3D indicators significantly enhances the explanatory power of the regression model for predicting socioeconomic profiles. Specifically, GDP per capita, urban population rate, built-up area per capita, and hospital count correspond to improvements of 25.0%, 19.8%, 35.5%, and 19.2%, respectively. These findings indicate that UL3D indicators have the potential to reflect the socioeconomic profiles of cities.

Abstract Image

Abstract Image

可感知的景观模式揭示了城市不可见的社会经济概况。
城市景观是居民的直接感知,也是城市化发展的重要标志。对城市景观进行全面评估对于指导包容性、弹性和可持续城市及人类住区的发展至关重要。以往的研究主要分析卫星遥感得出的二维景观指标,可能忽略了景观的三维构造所提供的宝贵见解。这一局限性源于获取大面积三维数据的高昂成本和有效评估指标的缺乏。在此,我们提出了四个城市景观三维指标(UL3D):绿色度、灰度、开放度和拥挤度。我们采用深度学习方法,利用中国 303 个主要城市的 403 万张街景图像构建了 UL3D。我们将城市背景和二维城市景观指标与 UL3D 结合起来,预测城市的社会经济概况。结果表明,UL3D指标与二维景观指标存在差异,二者之间的平均相关系数较低,仅为0.31。2018-2019年,受新型城镇化举措影响,城市景观出现变化点,灰度和拥挤率减缓,而开放度增加。UL3D指标的加入大大增强了回归模型预测社会经济概况的解释力。具体而言,人均 GDP、城市人口率、人均建筑面积和医院数量分别提高了 25.0%、19.8%、35.5% 和 19.2%。这些研究结果表明,UL3D 指标具有反映城市社会经济状况的潜力。
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来源期刊
Science Bulletin
Science Bulletin MULTIDISCIPLINARY SCIENCES-
CiteScore
24.60
自引率
2.10%
发文量
8092
期刊介绍: Science Bulletin (Sci. Bull., formerly known as Chinese Science Bulletin) is a multidisciplinary academic journal supervised by the Chinese Academy of Sciences (CAS) and co-sponsored by the CAS and the National Natural Science Foundation of China (NSFC). Sci. Bull. is a semi-monthly international journal publishing high-caliber peer-reviewed research on a broad range of natural sciences and high-tech fields on the basis of its originality, scientific significance and whether it is of general interest. In addition, we are committed to serving the scientific community with immediate, authoritative news and valuable insights into upcoming trends around the globe.
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