The Role of Earth Observation in an Integrated Deprived Area Mapping “System” for Low-to-Middle Income Countries
"> Figure 1
<p>Deprived area maps of Nairobi, Kenya generated with four different approaches to deprived area mapping—(<b>A</b>) Aggregated deprived households (data source: Improving Health in Slums Collaborative [<a href="#B89-remotesensing-12-00982" class="html-bibr">89</a>]),(<b>B</b>) field-based mapping (data source: Slum Dwellers International (SDI)), (<b>C</b>) human imagery classification (data source: Faculty of Geo-Information Science and Earth Observation (ITC) [<a href="#B90-remotesensing-12-00982" class="html-bibr">90</a>]), and (<b>D</b>) machine-learning imagery classification using Sentinel-2 imagery (2019).</p> "> Figure 2
<p>Omission and commission errors comparing human and machine-learning deprived area maps in Mumbai (left), and an example of a small deprived area mapped by the machine-learning-based approach (right) (Source Image: WorldView-2, DigitalGlobe).</p> "> Figure 3
<p>Outline of an integrated deprived area mapping “system” (adapted from [<a href="#B71-remotesensing-12-00982" class="html-bibr">71</a>]). SDGs: sustainable development goals.</p> "> Figure 4
<p>The methods used in key peer-reviewed articles on Earth observation-based deprived area mapping since 2016. ML: machine-learning, CNN: convolutional neural networks, and OBIA: object-based image analysis.</p> "> Figure 5
<p>Ahmedabad, India: part of the historic city center (<b>a</b>) and deprived area (<b>b</b>) (source: Google Earth).</p> "> Figure 6
<p>Kinshasa, Democratic Republic of the Congo; Municipal map (<b>a</b>) and deprivation index (<b>b</b>).</p> "> Figure 7
<p>Land use map showing Dar es Salaam, Tanzania (left) input very high-resolution (VHR) image (upper right) and detailed city block classification (lower right).</p> "> Figure 8
<p>Mumbai deprived areas mapped at an aggregation level of 100 m (left) on top of a Planetscope image; Bangalore with the same 100-m grid (right) on top of Pleiades images and ground photo of a temporary settlement in Bangalore (lower right).</p> "> Figure 9
<p>Comparison of cases (<a href="#sec3dot2-remotesensing-12-00982" class="html-sec">Section 3.2</a>) on their roles for addressing scalability and transferability.</p> ">
Abstract
:1. Introduction
2. The Design of an Integrated Deprived Area Mapping System (IDeAMapS)
2.1. Requirements for Deprived Area Mapping
- Relating to area physical characteristics: Deprived areas are characterized by their morphology in the urban environment. Physical indicators of such areas reflect building characteristics such as their size, shape, and height; road and other access networks; building density; settlement shape; settlement location with respect to environmental features such as public green or blue spaces, steep slopes, and flood zones; and neighborhood characteristics such as proximity to railways and high-voltage power lines [9].
- Relating to area social characteristics: Deprived areas are characterized by a wide range of features in their social environment, which are influenced by policies, regulations, and practices (such as tenure or waste management). Social indicators of deprived areas include the presence of crime; proximity and accessibility to schools, health facilities, shops, jobs, and public infrastructure; and social capital derived from community-based organizations and among neighbors with shared identities [8].
- Context-dependent: The physical and social characteristics of deprived areas differ across cities and countries and even within one neighborhood [10]. Furthermore, such areas are not static. The characteristics that define deprived areas at particular moments in time may alter due to changes in local, national, and global factors [5,12].
- Comparable across cities and countries: To adequately support national planning activities and programs, and to be used in global initiatives such as the SDGs, there must be consistency in deprived area definitions across cities and countries [23]. This is meant to set the basic requirements for data on deprived areas.
- Updated frequently with timely data: Deprived areas are highly dynamic and can change fast [75]. Common transition processes relate to development stages, i.e., from low-density infant settlements to high-density saturated neighborhoods, sudden major shifts in population due to demolitions or rapid growth, locational dynamics of temporary settlements, or deprived areas transformed into nondeprived after successful upgrading. Therefore, frequent updates to deprived area maps are necessary [76].
- Protective of individual privacy and vulnerable populations: Given the relatively high spatio-temporal resolution of deprived area maps, individual and group privacy in all published data, as well as transparency in the methods used, should be ensured. There may also be a need to selectively mask the most vulnerable deprived areas or blur their boundaries [74].
- Developed in an inclusive multi-stakeholder process: The existence of deprived areas reflects a story of social inequality, exclusion, and/or oppression. Urban deprivation does not emerge at random, and their transition into a place that is “inclusive, safe, resilient, and sustainable” requires addressing the policies and social attitudes that caused its establishment. This requires the involvement of communities and authorities, both locally and nationally [77].
2.2. Current Approaches to Deprived Area Mapping
2.2.1. Aggregated Slum Households Approach
2.2.2. Field-Based Mapping
2.2.3. Human Imagery Classification Approach
2.2.4. Semi-Automatic Imagery Classification Approach
2.3. Comparison of the Existing Deprived Area Mapping Approaches
2.4. The Proposed IDeAMapS Framework
3. The Role of Earth Observation for the Design of an Integrated Deprived Area Mapping System
3.1. The Most Promising Machine-Learning Methods towards an Integrated Deprived Area Mapping System
3.2. Example Cases of Machine Learning for Deprived Area Mapping
3.2.1. The Potential of High-Resolution Gridded Datasets to Map Deprived Areas (Case 1)
3.2.2. The Potential of OBIA for Generating Land Cover Information and Mapping Deprived Areas at City-Block Level (Case 2)
3.2.3. Contextual Features for Mapping Deprived Areas (Case 3)
3.3. Deep Learning for Mapping Deprived Areas (Case 4)
4. Discussion
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Requirement | Description |
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Relating to area physical characteristics | Deprivation is defined by the neighborhood physical characteristics using the three levels of slum ontology [7]: Object, e.g.,
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Relating to area social characteristics | Deprivation is defined by the neighborhood social environment Social capital, e.g.,
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Context-dependent | Deprivation is related to the local context Local context
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Comparable across cities and countries | Global coverage
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Updated frequently with timely data | Frequent updates
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Protective of individual privacy and vulnerable populations | Deprived area maps are sufficiently detailed to support planning and monitoring but do not reveal exact locations of slums, informal settlements, and areas of inadequate housing
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Developed via an inclusive multi-stakeholder process | Deprived area maps should be customized to stakeholders, e.g.,
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Approach | Strengths |
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Aggregated slum household | The measure of household-level poverty
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Field-based mapping | Relating to both neighborhood-level social and physical characteristics
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Human imagery interpretation | Relating to neighborhood physical characteristics
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Machine imagery classification | Relating to neighborhood physical characteristics
|
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Kuffer, M.; Thomson, D.R.; Boo, G.; Mahabir, R.; Grippa, T.; Vanhuysse, S.; Engstrom, R.; Ndugwa, R.; Makau, J.; Darin, E.; et al. The Role of Earth Observation in an Integrated Deprived Area Mapping “System” for Low-to-Middle Income Countries. Remote Sens. 2020, 12, 982. https://doi.org/10.3390/rs12060982
Kuffer M, Thomson DR, Boo G, Mahabir R, Grippa T, Vanhuysse S, Engstrom R, Ndugwa R, Makau J, Darin E, et al. The Role of Earth Observation in an Integrated Deprived Area Mapping “System” for Low-to-Middle Income Countries. Remote Sensing. 2020; 12(6):982. https://doi.org/10.3390/rs12060982
Chicago/Turabian StyleKuffer, Monika, Dana R. Thomson, Gianluca Boo, Ron Mahabir, Taïs Grippa, Sabine Vanhuysse, Ryan Engstrom, Robert Ndugwa, Jack Makau, Edith Darin, and et al. 2020. "The Role of Earth Observation in an Integrated Deprived Area Mapping “System” for Low-to-Middle Income Countries" Remote Sensing 12, no. 6: 982. https://doi.org/10.3390/rs12060982
APA StyleKuffer, M., Thomson, D. R., Boo, G., Mahabir, R., Grippa, T., Vanhuysse, S., Engstrom, R., Ndugwa, R., Makau, J., Darin, E., de Albuquerque, J. P., & Kabaria, C. (2020). The Role of Earth Observation in an Integrated Deprived Area Mapping “System” for Low-to-Middle Income Countries. Remote Sensing, 12(6), 982. https://doi.org/10.3390/rs12060982