集合(抽象数据类型)
感知
班级(哲学)
建筑环境
比例(比率)
构造(python库)
城市环境
计算机科学
地理
环境规划
运输工程
人工智能
土木工程
心理学
工程类
地图学
神经科学
程序设计语言
作者
Jialyu He,Jinbao Zhang,Yao Yao,Xia Li
出处
期刊:Cities
[Elsevier]
日期:2023-01-07
卷期号:134: 104189-104189
被引量:29
标识
DOI:10.1016/j.cities.2023.104189
摘要
Accurate and efficient assessment of large-scale urban renewal potential is an indispensable prerequisite for managing and facilitating projects. However, few studies consider the built environment when assessing urban renewal potential because it is difficult to measure. Street view images can show the physical setting of a place for humans to perceive the built environment. Hence, we separately extracted emotional and visual perceptions from street view images to construct a new comprehensive indicator set to assess multi-class urban renewal potentials. To establish the assessment model, we applied a backpropagation neural network based on the presence and background learning (PBL-BPNN). The renewal potential assessment based on the proposed indicator set can reach the highest accuracy. Emotional perceptions contribute more to assessing renewal potential than visual perceptions because they are more consistent in portraying the blighted built environment. Emotionally, the ratings of safety, boring, depression, and lively are stable in the blighted built environment. Visually, greenness and imageability often remain at lower values, highlighting the importance of greenspace and urban furniture in determining urban renewal. Furthermore, multi-class renewal potentials can be used for scenario analysis by assuming different renewal intentions. The results can support governments and planners in making efficient urban renewal decisions.
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