Neighborhood gentrification plays a significant role in shaping the social and economic well-being of both individuals and communities at large. While some efforts have been made to detect gentrification in cities, existing approaches rely mainly on estimated measures from survey data, require substantial work of human labeling, and are limited in characterizing the neighborhood as a whole. We propose a novel approach to detecting neighborhood gentrification at a large-scale based on the physical appearance of neighborhoods by incorporating historical street-level visual data. We show the effectiveness of the proposed method by comparing results from our approach with gentrification measures from previous literature and case studies. Our approach has the potential to supplement existing indicators of gentrification and become a valid resource for urban researchers and policy makers.
翻译:邻里共生关系在决定个人和整个社区的社会和经济福祉方面起着重要作用,虽然已作出一些努力来查明城市的中生关系,但现有办法主要依靠调查数据的估计措施,需要大量的人类标签工作,并限制了整个邻里的特点。我们建议采用一种新办法,通过纳入历史街道水平的视觉数据,根据邻里的实际外观,大规模地发现邻里共生关系。我们通过将我们的方法结果与以往文献和案例研究的中生化措施进行比较,显示了拟议方法的有效性。我们的办法有可能补充现有的中生关系指标,成为城市研究人员和决策者的有效资源。