Publication | Open Access
Deep Learning the City : Quantifying Urban Perception At A Global Scale
51
Citations
39
References
2016
Year
Artificial IntelligenceConvolutional Neural NetworkEngineeringMachine LearningOnline VolunteersUrban ScienceSocial SciencesImage AnalysisData SciencePattern RecognitionComputer Vision MethodsUrban EnvironmentMachine VisionFeature LearningA Global ScaleVision Language ModelUrban PlanningComputer ScienceNeural NetworksDeep LearningComputer VisionUrban GeographyScene UnderstandingUrban PerceptionScene Modeling
Computer vision methods that quantify the perception of urban environment are increasingly being used to study the relationship between a city's physical appearance and the behavior and health of its residents. Yet, the throughput of current methods is too limited to quantify the perception of cities across the world. To tackle this challenge, we introduce a new crowdsourced dataset containing 110,988 images from 56 cities, and 1,170,000 pairwise comparisons provided by 81,630 online volunteers along six perceptual attributes: safe, lively, boring, wealthy, depressing, and beautiful. Using this data, we train a Siamese-like convolutional neural architecture, which learns from a joint classification and ranking loss, to predict human judgments of pairwise image comparisons. Our results show that crowdsourcing combined with neural networks can produce urban perception data at the global scale.
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