Evaluating and Comparing Human Perceptions of Streets in Two Megacities by Integrating Street-View Images, Deep Learning, and Space Syntax

Author:

Lei Yalun1,Zhou Hongtao1ORCID,Xue Liang2ORCID,Yuan Libin3ORCID,Liu Yigang4ORCID,Wang Meng5,Wang Chuan6

Affiliation:

1. College of Design and Innovation, Tongji University, Shanghai 200092, China

2. Academic Affairs Office, Guangdong University of Education, Guangzhou 510303, China

3. Department of Architecture, University of Florence, 50041 Florence, Italy

4. College of Art and Design, Nanjing Forestry University, Nanjing 210037, China

5. Shanghai Academy of Fine Arts, Shanghai University, Shanghai 200444, China

6. School of Design and Fashion, Zhejiang University of Science and Technology, Hangzhou 310023, China

Abstract

Street quality plays a crucial role in promoting urban development. There is still no consensus on how to quantify human street quality perception on a large scale or explore the relationship between street quality and street composition elements. This study investigates a new approach for evaluating and comparing street quality perception and accessibility in Shanghai and Chengdu, two megacities with distinct geographic characteristics, using street-view images, deep learning, and space syntax. The result indicates significant differences in street quality perception between Shanghai and Chengdu. In Chengdu, there is a curvilinear distribution of the highest positive perceptions along the riverfront space and a radioactive spatial distribution of the highest negative perceptions along the ring road and main roads. Shanghai displays a fragmented cross-aggregation and polycentric distribution of the streets with the highest positive and negative perceptions. Thus, it is reasonable to hypothesize that street quality perception closely correlates with the urban planning and construction process of streets. Moreover, we used multiple linear regression to explain the relationship between street quality perception and street elements. The results show that buildings in Shanghai and trees, pavement, and grass in Chengdu were positively associated with positive perceptions. Walls in both Shanghai and Chengdu show a consistent positive correlation with negative perceptions and a consistent negative correlation with other positive perceptions, and are most likely to contribute to the perception of low street quality. Ceilings were positively associated with negative perceptions in Shanghai but are not the major street elements in Chengdu, while the grass is the opposite of the above results. Our research can provide a cost-effective and rapid solution for large-scale, highly detailed urban street quality perception assessments to inform human-scale urban planning.

Funder

China Postdoctoral Science Foundation

Shanghai Municipal Foundation for Philosophy and Social Science

Publisher

MDPI AG

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