Enriching geospatial data with computer vision to identify urban environment determinants of social interactions

Francisco Garrido-Valenzuela, Sander van Cranenburgh, O. Cats
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引用次数: 1

Abstract

Abstract. Characteristics of urban space (co-)determine human behaviour, including their social interaction patterns. However, despite numerous studies that have examined how the urban space impacts social interactions, their relationships are still poorly understood. Recent developments in computer vision and machine learning fields offer promising new ways to analyse and collect data on social interactions. This study proposes a new computer vision-based approach to study how the urban space impacts social interactions. The proposed method uses pre-trained object detection models to detect social interactions (including their geo-locations) from street-view imagery. After that, it regresses urban space characteristics – which are also detected using object detection models – on social interactions. For this study, 294,852 street-level images from three Dutch cities are analysed. Results from linear regression analysis show that for these three Dutch cities people tend to meet in places with a strong presence of recreational attractions and bicycles. Also, the results of data collection and image processing can be used to identify the areas most likely to produce social interactions in urban space to conduct urban studies.
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利用计算机视觉丰富地理空间数据,识别社会互动的城市环境决定因素
摘要城市空间的特征(共同)决定了人类的行为,包括他们的社会互动模式。然而,尽管有许多研究调查了城市空间如何影响社会互动,但它们之间的关系仍然知之甚少。计算机视觉和机器学习领域的最新发展为分析和收集社会互动数据提供了有前途的新方法。本研究提出了一种新的基于计算机视觉的方法来研究城市空间如何影响社会互动。该方法使用预先训练的目标检测模型从街景图像中检测社会互动(包括其地理位置)。之后,它将城市空间特征(也可以通过物体检测模型检测到)回归到社会互动上。在这项研究中,研究人员分析了来自荷兰三个城市的294852张街道图像。线性回归分析的结果表明,在这三个荷兰城市中,人们倾向于在娱乐景点和自行车较多的地方见面。此外,数据收集和图像处理的结果可用于确定城市空间中最有可能产生社会互动的区域,以进行城市研究。
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