Texture-based identification of urban slums in Hyderabad, India using remote sensing data
Texture-based identification of urban slums in Hyderabad, India using remote sensing data
This paper outlines a methodology to identify informal settlements out of high resolution satellite imagery using the concept of lacunarity. Principal component analysis and line detection algorithms were applied alternatively to obtain a high resolution binary representation of the city of Hyderabad, India and used to calculate lacunarity values over a 60 × 60 m grid. A number of ground truthing areas were used to classify the resulting datasets and to identify lacunarity ranges which are typical for settlement types that combine high density housing and small dwelling size – features characteristic for urban slums in India. It was discovered that the line detection algorithm is advantageous over principal component analysis in providing suitable binary datasets for lacunarity analysis as it is less sensitive to spectral variability within mosaicked imagery. The resulting slum location map constitutes an efficient tool in identifying particularly overcrowded areas of the city and can be used as a reliable source in vulnerability and resilience assessments at a later stage. The proposed methodology allows for rapid analysis and comparison of multi-temporal data and can be applied on many developing urban agglomerations around the world.
image classification, lacunarity, informal settlements, slums, hyderabad/india, remote sensing, line detection, principal component analysis
660-667
Kit, Oleksandr
48dd3a17-16ef-4682-82c8-24950abc0681
Lüdeke, Matthias
d1833382-a11f-4ba2-b656-28450baee859
Reckien, Diana
50875f9c-3d4f-49b6-826e-846fe73a5d3c
March 2012
Kit, Oleksandr
48dd3a17-16ef-4682-82c8-24950abc0681
Lüdeke, Matthias
d1833382-a11f-4ba2-b656-28450baee859
Reckien, Diana
50875f9c-3d4f-49b6-826e-846fe73a5d3c
Kit, Oleksandr, Lüdeke, Matthias and Reckien, Diana
(2012)
Texture-based identification of urban slums in Hyderabad, India using remote sensing data.
Applied Geography, 32 (2), .
(doi:10.1016/j.apgeog.2011.07.016).
Abstract
This paper outlines a methodology to identify informal settlements out of high resolution satellite imagery using the concept of lacunarity. Principal component analysis and line detection algorithms were applied alternatively to obtain a high resolution binary representation of the city of Hyderabad, India and used to calculate lacunarity values over a 60 × 60 m grid. A number of ground truthing areas were used to classify the resulting datasets and to identify lacunarity ranges which are typical for settlement types that combine high density housing and small dwelling size – features characteristic for urban slums in India. It was discovered that the line detection algorithm is advantageous over principal component analysis in providing suitable binary datasets for lacunarity analysis as it is less sensitive to spectral variability within mosaicked imagery. The resulting slum location map constitutes an efficient tool in identifying particularly overcrowded areas of the city and can be used as a reliable source in vulnerability and resilience assessments at a later stage. The proposed methodology allows for rapid analysis and comparison of multi-temporal data and can be applied on many developing urban agglomerations around the world.
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e-pub ahead of print date: 24 August 2011
Published date: March 2012
Keywords:
image classification, lacunarity, informal settlements, slums, hyderabad/india, remote sensing, line detection, principal component analysis
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Local EPrints ID: 340848
URI: http://eprints.soton.ac.uk/id/eprint/340848
ISSN: 0143-6228
PURE UUID: b6ea1a63-08ec-4c5b-8539-537672cd2062
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Date deposited: 04 Jul 2012 11:40
Last modified: 14 Mar 2024 11:30
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Author:
Matthias Lüdeke
Author:
Diana Reckien
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