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City Forensics: Using Visual Elements to Predict Non-Visual City Attributes

机译:城市取证:使用视觉元素预测非视觉城市属性

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摘要

We present a method for automatically identifying and validating predictive relationships between the visual appearance of a city and its non-visual attributes (e.g. crime statistics, housing prices, population density etc.). Given a set of street-level images and (location, city-attribute-value) pairs of measurements, we first identify visual elements in the images that are discriminative of the attribute. We then train a predictor by learning a set of weights over these elements using non-linear Support Vector Regression. To perform these operations efficiently, we implement a scalable distributed processing framework that speeds up the main computational bottleneck (extracting visual elements) by an order of magnitude. This speedup allows us to investigate a variety of city attributes across 6 different American cities. We find that indeed there is a predictive relationship between visual elements and a number of city attributes including violent crime rates, theft rates, housing prices, population density, tree presence, graffiti presence, and the perception of danger. We also test human performance for predicting theft based on street-level images and show that our predictor outperforms this baseline with 33% higher accuracy on average. Finally, we present three prototype applications that use our system to (1) define the visual boundary of city neighborhoods, (2) generate walking directions that avoid or seek out exposure to city attributes, and (3) validate user-specified visual elements for prediction.
机译:我们提出了一种方法,用于自动识别和验证城市的视觉外观与其非视觉属性(例如犯罪统计数据,房价,人口密度等)之间的预测关系。给定一组街道级别的图像和(位置,城市属性值)测量对,我们首先确定图像中可区分属性的视觉元素。然后,我们通过使用非线性支持向量回归学习这些元素的权重集来训练预测变量。为了有效地执行这些操作,我们实现了可伸缩的分布式处理框架,该框架将主要的计算瓶颈(提取视觉元素)加快了一个数量级。通过这种提速,我们可以研究美国6个不同城市的各种城市属性。我们发现视觉元素与许多城市属性之间确实存在可预测的关系,包括暴力犯罪率,盗窃率,房价,人口密度,树木存在,涂鸦存在以及对危险的感知。我们还根据街道图像测试了人类在预测盗窃方面的表现,并表明我们的预测器以平均33%的精度优于该基准。最后,我们提供了三个原型应用程序,这些应用程序使用我们的系统来(1)定义城市社区的视觉边界;(2)生成避免或寻找暴露于城市属性的步行路线;以及(3)验证用户指定的视觉元素,以用于预测。

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