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Object-based random forest classification for informal settlements identification in the Middle East: Jeddah a case study

Ahmad Fallatah, Simon Jones, David Mitchell

2020International Journal of Remote Sensing38 citationsDOI

Abstract

The identification of informal settlements in urban areas is an important step in developing and implementing pro-poor urban policies. Understanding when, where and who lives inside informal settlements is critical in efforts to improve their resilience. This study aims to analyse the capability of machine-learning (ML) methods to map informal settlement areas in Jeddah, Saudi Arabia, using very-high-resolution (VHR) imagery and terrain data. Fourteen indicators of settlement characteristics were derived and mapped using an object-based ML approach and VHR imagery. These indicators were categorized according to three different spatial levels: environ, settlement and object. The most useful indicators for prediction were found to be density and texture measures, (with random forest (RF) relative importance measures of over 25% and 23% respectively). The success of this approach was evaluated using a small, fully independent validation dataset. Informal areas were mapped with an overall accuracy of 91%. Object-based ML as a processing chain approach performed better (8%) than object-based image analysis alone due to its ability to encompass all available geospatial levels.

Topics & Concepts

Settlement (finance)Human settlementRandom forestInformal settlementsObject basedIdentification (biology)Geospatial analysisTerrainGeographyObject (grammar)Computer scienceEnvironmental resource managementRemote sensingCartographyArtificial intelligenceEnvironmental scienceArchaeologyEcologyBiologyWorld Wide WebPaymentEconomicsEconomic growthRemote-Sensing Image ClassificationLand Use and Ecosystem ServicesRemote Sensing in Agriculture
Object-based random forest classification for informal settlements identification in the Middle East: Jeddah a case study | Litcius