Joint Center for History and Economics, Harvard University, Cambridge, MA 02138;
Media Lab, Massachusetts Institute of Technology, Cambridge, MA 02139.
Proc Natl Acad Sci U S A. 2017 Jul 18;114(29):7571-7576. doi: 10.1073/pnas.1619003114. Epub 2017 Jul 6.
Which neighborhoods experience physical improvements? In this paper, we introduce a computer vision method to measure changes in the physical appearances of neighborhoods from time-series street-level imagery. We connect changes in the physical appearance of five US cities with economic and demographic data and find three factors that predict neighborhood improvement. First, neighborhoods that are densely populated by college-educated adults are more likely to experience physical improvements-an observation that is compatible with the economic literature linking human capital and local success. Second, neighborhoods with better initial appearances experience, on average, larger positive improvements-an observation that is consistent with "tipping" theories of urban change. Third, neighborhood improvement correlates positively with physical proximity to the central business district and to other physically attractive neighborhoods-an observation that is consistent with the "invasion" theories of urban sociology. Together, our results provide support for three classical theories of urban change and illustrate the value of using computer vision methods and street-level imagery to understand the physical dynamics of cities.
哪些社区经历了物理改善?在本文中,我们介绍了一种计算机视觉方法,用于从时间序列街景图像中测量社区物理外观的变化。我们将五个美国城市的物理外观变化与经济和人口数据联系起来,发现了三个预测社区改善的因素。首先,受过高等教育的成年人密集居住的社区更有可能经历物理改善——这一观察结果与将人力资本与当地成功联系起来的经济文献是一致的。其次,初始外观较好的社区平均经历了更大的积极改善——这一观察结果与城市变化的“ tipping”理论是一致的。第三,社区改善与与市中心和其他具有吸引力的社区的物理接近程度呈正相关——这一观察结果与城市社会学的“入侵”理论是一致的。总的来说,我们的结果为城市变化的三个经典理论提供了支持,并说明了使用计算机视觉方法和街景图像来理解城市物理动态的价值。