2021
DOI: 10.1088/1755-1315/887/1/012004
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Indices Extraction from Multitemporal Remote Sensing Data for Mapping Urban Built-Up

Abstract: Remote sensing data analysis in the cloudy area is still a challenging process. Fortunately, remote sensing technology is fast growing. As a result, multitemporal data could be used to overcome the problem of the cloudy area. Using multitemporal data is a common approach to address the cloud problem. However, most methods only use two data, one as the main data and the other as complementary of the cloudy area. In this paper, a method to harness multitemporal remote sensing data for automatically extracting so… Show more

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“…Table 1 The formulas of NDVI and NDWI (Hayati, Hestrio, Cendiana, & Kustiyo, 2021) Name of the index Index Formula…”
Section: Methodsmentioning
confidence: 99%
“…Table 1 The formulas of NDVI and NDWI (Hayati, Hestrio, Cendiana, & Kustiyo, 2021) Name of the index Index Formula…”
Section: Methodsmentioning
confidence: 99%