Building Floorspace in China: A Dataset and Learning Pipeline
Peter Egger, Susie Xi Rao, Sebastiano Papini

TL;DR
This paper introduces a satellite image-based dataset and a multi-task learning pipeline to measure building floorspace, including footprint and height, across 40 Chinese cities, enabling urban growth analysis.
Contribution
It presents a novel multi-task object segmentation approach using Sentinel satellite images to estimate building footprints and heights simultaneously at large scale.
Findings
High accuracy in building footprint detection
Effective height estimation from multi-angle satellite images
Strong correlation between estimated floorspace and nightlight data
Abstract
This paper provides a first milestone in measuring the floorspace of buildings (that is, building footprint and height) for 40 major Chinese cities. The intent is to maximize city coverage and, eventually provide longitudinal data. Doing so requires building on imagery that is of a medium-fine-grained granularity, as larger cross sections of cities and longer time series for them are only available in such format. We use a multi-task object segmenter approach to learn the building footprint and height in the same framework in parallel: (1) we determine the surface area is covered by any buildings (the square footage of occupied land); (2) we determine floorspace from multi-image representations of buildings from various angles to determine the height of buildings. We use Sentinel-1 and -2 satellite images as our main data source. The benefits of these data are their large…
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Taxonomy
TopicsImpact of Light on Environment and Health · Land Use and Ecosystem Services · Video Surveillance and Tracking Methods
