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Learning High-Level Judgments of Urban Perception

机译:学习城市认知的高级判断

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Human observers make a variety of perceptual inferences about pictures of places based on prior knowledge and experience. In this paper we apply computational vision techniques to the task of predicting the perceptual characteristics of places by leveraging recent work on visual features along with a geo-tagged dataset of images associated with crowd-sourced urban perception judgments for wealth, uniqueness, and safety. We perform extensive evaluations of our models, training and testing on images of the same city as well as training and testing on images of different cities to demonstrate generalizability. In addition, we collect a new densely sampled dataset of streetview images for 4 cities and explore joint models to collectively predict perceptual judgments at city scale. Finally, we show that our predictions correlate well with ground truth statistics of wealth and crime.
机译:人类观察者根据先前的知识和经验制作关于地点图片的各种感知推断。 在本文中,我们将计算视觉技术应用于通过利用最近的视觉特征的近期工作以及与人群资源,唯一性和安全性相关的图像的地理标记数据集以及与人群的城市认知判断相关的地理标记数据集来预测所在地区的感知特征的任务。 我们对我们在同一个城市的图像的模型,培训和测试以及不同城市的图像进行培训和测试来表现出广泛的评估,以证明概括性。 此外,我们收集了4个城市的街景图像的新密集采样数据集,并探索联合模型,共同预测城市规模的感知判断。 最后,我们表明我们的预测与财富和犯罪的地面真理统计数据相关。

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