Multimodal deep learning from satellite and street-level imagery for measuring income, overcrowding, and environmental deprivation in urban areas

dc.contributor.authorSuel, E.
dc.contributor.authorBhatt, S.
dc.contributor.authorBrauer, M.
dc.contributor.authorFlaxman, S.
dc.contributor.authorEzzati, M.
dc.date.accessioned2021-05-14T10:51:12Z
dc.date.available2021-05-14T10:51:12Z
dc.date.issued2021
dc.descriptionResearch Articleen_US
dc.description.abstractData collected at large scale and low cost (e.g. satellite and street level imagery) have the potential to substantially improve resolution, spatial coverage, and temporal frequency of measurement of urban inequalities. Multiple types of data from different sources are often available for a given geographic area. Yet, most studies utilize a single type of input data when making measurements due to methodological difficulties in their joint use. We propose two deep learning-based methods for jointly utilizing satellite and street level imagery for measuring urban inequalities. We use London as a case study for three selected outputs, each measured in decile classes: income, overcrowding, and environmental deprivation. We compare the performances of our proposed multimodal models to corresponding unimodal ones using mean absolute error (MAE). First, satellite tiles are appended to street level imagery to enhance predictions at locations where street images are available leading to improvements in accuracy by 20, 10, and 9% in units of decile classes for income, overcrowding, and living environment. The second approach, novel to the best of our knowledge, uses a U-Net architecture to make predictions for all grid cells in a city at high spatial resolution (e.g. for 3 m × 3 m pixels in London in our experiments). It can utilize city wide availability of satellite images as well as more sparse information from streetlevel images where they are available leading to improvements in accuracy by 6, 10, and 11%. We also show examples of prediction maps from both approaches to visually highlight performance differencesen_US
dc.identifier.urihttp://ugspace.ug.edu.gh/handle/123456789/36341
dc.language.isoenen_US
dc.publisherRemote Sensing of Environmenten_US
dc.subjectConvolutional neural networksen_US
dc.subjectSegmentationen_US
dc.subjectUrban measurementsen_US
dc.subjectSatellite imagesen_US
dc.subjectStreet-level imagesen_US
dc.titleMultimodal deep learning from satellite and street-level imagery for measuring income, overcrowding, and environmental deprivation in urban areasen_US
dc.typeArticleen_US

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