Department of Urban Planning and Design, Faculty of Architecture, The University of Hong Kong, Hong Kong, China.
College of Architecture and Urban Planning, Tongji University, Shanghai 200092, China.
Int J Environ Res Public Health. 2019 May 20;16(10):1782. doi: 10.3390/ijerph16101782.
Many studies have been made on street quality, physical activity and public health. However, most studies so far have focused on only few features, such as street greenery or accessibility. These features fail to capture people's holistic perceptions. The potential of fine grained, multi-sourced urban data creates new research avenues for addressing multi-feature, intangible, human-oriented issues related to the built environment. This study proposes a systematic, multi-factor quantitative approach for measuring street quality with the support of multi-sourced urban data taking Yangpu District in Shanghai as case study. This holistic approach combines typical and new urban data in order to measure street quality with a human-oriented perspective. This composite measure of street quality is based on the well-established 5Ds dimensions: Density, Diversity, Design, Destination accessibility and Distance to transit. They are combined as a collection of new urban data and research techniques, including location-based service (LBS) positioning data, points of interest (PoIs), elements and visual quality of street-view images extraction with supervised machine learning, and accessibility metrics using network science. According to these quantitative measurements from the five aspects, streets were classified into eight feature clusters and three types reflecting the value of street quality using a hierarchical clustering method. The classification was tested with experts. The analytical framework developed through this study contributes to human-oriented urban planning practices to further encourage physical activity and public health.
许多研究都集中在街道质量、身体活动和公共健康方面。然而,迄今为止,大多数研究都只关注少数几个特征,如街道绿化或可达性。这些特征未能捕捉到人们的整体感知。细粒度、多源城市数据的潜力为解决与建筑环境有关的多特征、无形、以人为中心的问题开辟了新的研究途径。本研究提出了一种系统的、多因素的定量方法,在多源城市数据的支持下,以上海杨浦区为案例研究,测量街道质量。这种整体方法结合了典型和新的城市数据,从以人为中心的角度来衡量街道质量。这种街道质量的综合衡量标准基于经过充分验证的 5D 维度:密度、多样性、设计、可达性和到交通的距离。它们被结合为一系列新的城市数据和研究技术,包括基于位置的服务(LBS)定位数据、兴趣点(PoIs)、使用监督机器学习提取的街景图像元素和视觉质量,以及使用网络科学的可达性指标。根据这五个方面的定量测量,利用分层聚类方法将街道分为八个特征群和三种类型,反映街道质量的价值。该分类通过专家进行了测试。通过这项研究开发的分析框架有助于以人为本的城市规划实践,以进一步鼓励身体活动和公共健康。