RESIDENTIAL CLASSIFICATION USING GEOBIA IN PART OF JAKARTA SUBURBAN AREA

Akmal Hafiudzan, Prima Widayani, Nurwita Mustika Sari

Abstract

The increasing of urban population followed by socioeconomic problems leads to emerging various number of researchs in urban area, especially in Jakarta Metropolitan Area. One of them are escalated tension-conflict due to rise of newly Gated Communities residential that sprawl across local residents (Kampung Kota). There is urgency to map all 3 types of residential (Kampung Kota, Perumnas, Cluster) through satellite imagery on a wide-scale. This study uses WorldView-2 imagery data recorded for 2020. The method used is an object-based method, namely GEOBIA using the eCognition Developer 64 software. The GEOBIA process is carried out through three stages, firstly the segmentation to separate residential blocks from surrounding land cover objects (bodies of water, vegetation, open land, non-residential built-up land) as well as exploring the variable values of each object, then sample-based classification using the SVM algorithm on Google Earth Engine application, and accuracy test to evaluate semantic and geometric accuracy levels. The results of the mapping are 3 classes of residential types followed by 4 classes of land cover. The overall accuracy of the three types of residential is 80% which means that the GEOBIA approach is able to show good performance.

Keywords

GEOBIA; SVM; eCognition; Google Earth Engine; WorldView-2

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References

Baatz, M., & Schäpe, A. (2000).

Multiresolution segmentation: an

optimization approach for high

quality multi-scale image

segmentation. XII Angewandte

Geographische Informations

Verarbeitung, Wichmann- Verlag,

Heidelberg.

Blaschke, T., et al. (2014). Geographic

Object Based Image Analysis –

Towards a New Paradigm. ISPRS

Journal of Photogrammetry &

Remote Sensing, 87: pp.180–191.

Danoedoro, P. (2014). Pengantar

penginderaan jauh digital.

Yogyakarta: Penerbit Andi

Kamal, M., & Johansen, K. (2017).

Explicit area-based accuracy

assessment for mangrove tree crown

delineation using Geographic

Object-Based Image Analysis

(GEOBIA). In Earth Resources and

Environmental Remote Sensing/GIS

Applications VIII (Vol. 10428, p.

I). International Society for

Optics and Photonics

Kete, S. C. R., Suprihatin, Tarigan, S.

D., Effendi, H. (2019). Land use

classification based on object and

pixel using Landsat 8 OLI in Kendari

City, Southeast Sulawesi Province,

Indonesia. IOP Conf. Series: Earth

Environmental Science 284 012019

Nugroho, A.C. (2009). Kampung kota

sebagai sebuah titik tolak dalam

membentuk urbanitas dan ruang

kota berkelanjutan. Rekayasa:

Jurnal Ilmiah Fakultas Teknik

Universitas Lampung, 13(3), 210-

Roitman, S. (2010). Gated communities:

Definitions, causes and

consequences. Urban Design and

Planning (ICE), 163(DP1), pp. 31–38

Stiglitz, J. E. (2012). The Price of

Inequality: How Today’s Divided

Society Endangers Our Future. New

York, NY: WW Norton & Company

Topographisch Bureau (Batavia). (1900).

herzien in het jaar 1900 [Map].

Accessed on 21 January 2023 from

http://hdl.handle.net/1887.1/item:

Wu, W., Li, A.D., He, X.H., Ma, R., Liu,

H.B., Lv, J.K. (2018). A comparison

of support vector machines, artificial

neural network and classification

tree for identifying soil texture

classes in southwest China.

Comput. Electron. Agric. 144, 86–

Zhao, L., Ren, H., Cui, C., Huang, Y. A.

(2020). Partition-Based Detection of

Urban Villages Using High-Resolution Remote Sensing Imagery

in Guangzhou, China. Remote

Sensing, 12. DOI:

3390/rs1214233

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