Abstract
The survey-based slum mapping (SBSM) program conducted by the Indonesian government to reach the national target of “cities without slums” by 2019 shows mapping inconsistencies due to several reasons, e.g., the dependency on the surveyor’s experiences and the complexity of the slum indicators set. By relying on such inconsistent maps, it will be difficult to monitor the national slum upgrading program’s progress. Remote sensing imagery combined with machine learning algorithms could support the reduction of these inconsistencies. This study evaluates the performance of two machine learning algorithms, i.e., support vector machine (SVM) and random forest (RF), for slum mapping in support of the slum mapping campaign in Bandung, Indonesia. Recognizing the complexity in differentiating slum and formal areas in Indonesia, the study used a combination of spectral, contextual, and morphological features. In addition, sequential feature selection (SFS) combined with the Hilbert–Schmidt independence criterion (HSIC) was used to select significant features for classifying slums. Overall, the highest accuracy (88.5%) was achieved by the SVM with SFS using contextual, morphological, and spectral features, which is higher than the estimated accuracy of the SBSM. To evaluate the potential of machine learning-based slum mapping (MLBSM) in support of slum upgrading programs, interviews were conducted with several local and national stakeholders. Results show that local acceptance for a remote sensing-based slum mapping approach varies among stakeholder groups. Therefore, a locally adapted framework is required to combine ground surveys with robust and consistent machine learning methods, for being able to deal with big data, and to allow the rapid extraction of consistent information on the dynamics of slums at a large scale.
Highlights
Developing a contextual, machine learning-based slum mapping (MLBSM) approach requires a good understanding of the specific context
Based on such a conceptualization, image-based features are proxies to slum maps made by remote sensing imagery and machine learning
For the case of Bandung, the highest accuracy (88.5%) was obtained with support vector machine (SVM)
Summary
Slum upgrading has become an international concern and agenda promoted by the Millennium Development Goals (MDGs) and Sustainable Development Goals (SDGs). The Government of Indonesia has committed to reducing slums and released a new national policy, called the Sustainable Housing Programs 100-0-100, aiming at achieving cities without slums by 2019 [1]. The lack of accurate baseline data of slum areas is one of the challenges in achieving this target. Such data are required to support the government in the selection of priority areas, monitoring the implementation, Remote Sens. 2018, 10, x FOR PEER REVIEW and calculating areas before and after upgrading programs. In 2015, a total of 38,431 ha of slum areas wweerreerereppoorrteteddinin339900ccitiiteiessaannddddisistrtricictstsooffInInddoonneessiaiauussininggssuurrvveeyy--bbaasseeddsslluummmmaappppiinngg((SSBBSSMM))[[22]]
Published Version (Free)
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have