Using convolutional networks and satellite imagery to identify patterns in urban environments at a large scale
Adrian Albert, Jasleen Kaur, Marta Gonzalez

TL;DR
This paper leverages convolutional neural networks and satellite imagery to analyze urban land use patterns at a large scale, providing a scalable alternative to labor-intensive traditional methods.
Contribution
It introduces a method for classifying urban land use from satellite images using deep learning, with a new dataset and cross-city neighborhood comparison capabilities.
Findings
Deep CNNs achieve high accuracy in land use classification.
Satellite imagery representations can compare neighborhoods across cities.
The dataset is publicly available for further research.
Abstract
Urban planning applications (energy audits, investment, etc.) require an understanding of built infrastructure and its environment, i.e., both low-level, physical features (amount of vegetation, building area and geometry etc.), as well as higher-level concepts such as land use classes (which encode expert understanding of socio-economic end uses). This kind of data is expensive and labor-intensive to obtain, which limits its availability (particularly in developing countries). We analyze patterns in land use in urban neighborhoods using large-scale satellite imagery data (which is available worldwide from third-party providers) and state-of-the-art computer vision techniques based on deep convolutional neural networks. For supervision, given the limited availability of standard benchmarks for remote-sensing data, we obtain ground truth land use class labels carefully sampled from…
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Taxonomy
TopicsRemote-Sensing Image Classification · Impact of Light on Environment and Health · Land Use and Ecosystem Services
