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Measuring intra-urban poverty using land cover and texture metrics derived from remote sensing data
Highlights We quantify intra-urban poverty index from remote sensing metrics in Medellin, Colombia. This low-cost approach benefits cities where survey data is scarce or nonexistent. We analyze land cover, structure and texture descriptors computed from a VHR image. Remote sensing variables explain 59% of the variation of Slum Index.
Abstract This paper contributes empirical evidence about the usefulness of remote sensing imagery to quantify the degree of poverty at the intra-urban scale. This concept is based on two premises: first, that the physical appearance of an urban settlement is a reflection of the society; and second, that the people who reside in urban areas with similar physical housing conditions have similar social and demographic characteristics. We use a very high spatial resolution (VHR) image from one of the most socioeconomically divergent cities in the world, Medellin (Colombia), to extract information on land cover composition using per-pixel classification and on urban texture and structure using an automated tool for texture and structure feature extraction at object level. We evaluate the potential of these descriptors to explain a measure of poverty known as the Slum Index. We found that these variables explain up to 59% of the variability in the Slum Index. Similar approaches could be used to lower the cost of socioeconomic surveys by developing an econometric model from a sample and applying that model to the rest of the city and to perform intercensal or intersurvey estimates of intra-urban Slum Index maps.
Measuring intra-urban poverty using land cover and texture metrics derived from remote sensing data
Highlights We quantify intra-urban poverty index from remote sensing metrics in Medellin, Colombia. This low-cost approach benefits cities where survey data is scarce or nonexistent. We analyze land cover, structure and texture descriptors computed from a VHR image. Remote sensing variables explain 59% of the variation of Slum Index.
Abstract This paper contributes empirical evidence about the usefulness of remote sensing imagery to quantify the degree of poverty at the intra-urban scale. This concept is based on two premises: first, that the physical appearance of an urban settlement is a reflection of the society; and second, that the people who reside in urban areas with similar physical housing conditions have similar social and demographic characteristics. We use a very high spatial resolution (VHR) image from one of the most socioeconomically divergent cities in the world, Medellin (Colombia), to extract information on land cover composition using per-pixel classification and on urban texture and structure using an automated tool for texture and structure feature extraction at object level. We evaluate the potential of these descriptors to explain a measure of poverty known as the Slum Index. We found that these variables explain up to 59% of the variability in the Slum Index. Similar approaches could be used to lower the cost of socioeconomic surveys by developing an econometric model from a sample and applying that model to the rest of the city and to perform intercensal or intersurvey estimates of intra-urban Slum Index maps.
Measuring intra-urban poverty using land cover and texture metrics derived from remote sensing data
Duque, Juan C. (author) / Patino, Jorge E. (author) / Ruiz, Luis A. (author) / Pardo-Pascual, Josep E. (author)
Landscape and Urban Planning ; 135 ; 11-21
2014-11-12
11 pages
Article (Journal)
Electronic Resource
English
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