Liu Yunzhe, Chen Meixu, Wang Meihui, Huang Jing, Thomas Fisher, Rahimi Kazem, Mamouei Mohammad
Informal Cities, Oxford Martin School, University of Oxford, Oxford OX1 3BD, UK.
MRC Centre for Environment and Health, School of Public Health, Imperial College London, London W2 1PG, UK.
iScience. 2023 Feb 3;26(3):106132. doi: 10.1016/j.isci.2023.106132. eCollection 2023 Mar 17.
The proliferation of street view images (SVIs) and the constant advancements in deep learning techniques have enabled urban analysts to extract and evaluate urban perceptions from large-scale urban streetscapes. However, many existing analytical frameworks have been found to lack interpretability due to their end-to-end structure and "black-box" nature, thereby limiting their value as a planning support tool. In this context, we propose a five-step machine learning framework for extracting neighborhood-level urban perceptions from panoramic SVIs, specifically emphasizing feature and result interpretability. By utilizing the MIT Place Pulse data, the developed framework can systematically extract six dimensions of urban perceptions from the given panoramas, including perceptions of wealth, boredom, depression, beauty, safety, and liveliness. The practical utility of this framework is demonstrated through its deployment in Inner London, where it was used to visualize urban perceptions at the Output Area (OA) level and to verify against real-world crime rate.
街景图像(SVIs)的激增以及深度学习技术的不断进步,使得城市分析人员能够从大规模城市街景中提取和评估城市感知。然而,许多现有的分析框架由于其端到端结构和“黑箱”性质而缺乏可解释性,从而限制了它们作为规划支持工具的价值。在此背景下,我们提出了一个五步机器学习框架,用于从全景街景图像中提取邻里层面的城市感知,特别强调特征和结果的可解释性。通过利用麻省理工学院的Place Pulse数据,所开发的框架可以从给定的全景图中系统地提取城市感知的六个维度,包括对财富、无聊、抑郁、美丽、安全和活力的感知。该框架的实际效用通过在伦敦市中心的部署得到了证明,在那里它被用于在输出区域(OA)层面可视化城市感知,并与实际犯罪率进行验证。