Assessing the Potential of LAPAN-A3 Data for Landuse/landcover Mapping

LAPAN-A3 / LAPAN-IPB is the third generation of micro-satellite developed by Indonesian National Institute of Aeronautics and Space (LAPAN). The satellite carries a multispectral push-broom sensor that can record the earth's surface at the visible and near-infrared spectrum. Being launched in J...

Full description

Bibliographic Details
Main Authors: Zylshal Zylshal, Rachmad Wirawan, Dony Kushardono
Format: Article
Language:English
Published: Universitas Gadjah Mada 2018-12-01
Series:Indonesian Journal of Geography
Subjects:
Online Access:https://jurnal.ugm.ac.id/ijg/article/view/31449
id doaj-659567d4820447cdbf51182b505dca85
record_format Article
spelling doaj-659567d4820447cdbf51182b505dca852020-11-25T02:13:08ZengUniversitas Gadjah MadaIndonesian Journal of Geography0024-95212354-91142018-12-0150218419610.22146/ijg.3144923120Assessing the Potential of LAPAN-A3 Data for Landuse/landcover MappingZylshal Zylshal0Rachmad Wirawan1Dony Kushardono2Indonesian National Institute of Aeronautics and Space (LAPAN)Universitas Negeri MalangIndonesian National Institute of Aeronautics and Space (LAPAN)LAPAN-A3 / LAPAN-IPB is the third generation of micro-satellite developed by Indonesian National Institute of Aeronautics and Space (LAPAN). The satellite carries a multispectral push-broom sensor that can record the earth's surface at the visible and near-infrared spectrum. Being launched in June 2016, there has no been many publications related to the use of LAPAN-A3 multispectral data for landuse/landcover (LULC) mapping. This paper aims to provide information regarding the use of LAPAN-A3 data for the LULC extraction maximum likelihood algorithm as well as neural network and then evaluate the results. The LAPAN-A3 image was geometrically corrected by using Landsat-8 OLI image as reference data. Three test areas with a size of 1200x945 pixels are then selected for pixel-based classification with the two aforementioned algorithms. For comparison, both LAPAN-A3 and Landsat-8 data were classified for 3 test areas. Accuracy assessment was performed on both datasets using manually interpreted SPOT-6 Pansharpened image as reference data. Preliminary results showed that LAPAN-A3 were able to extract  10 different LULC classes, comprises of built-up area, forest, rivers, fishponds, shrubs, wetland forests, rice fields, sea, agricultural land, and bare soil. The overall accuracy of LAPAN-A3 data is generally lower than Landsat-8, which ranges from 49.76% to 71.74%. These results illustrate the potential of LAPAN-A3 data to derive LULC information. The lack of necessary parameters to perform radiometric correction and blurring effect are several issues that need to be solved to improve the accuracy LULC.https://jurnal.ugm.ac.id/ijg/article/view/31449LAPAN-A3Landsat-8LULCMaximum LikelihoodNeural Network
collection DOAJ
language English
format Article
sources DOAJ
author Zylshal Zylshal
Rachmad Wirawan
Dony Kushardono
spellingShingle Zylshal Zylshal
Rachmad Wirawan
Dony Kushardono
Assessing the Potential of LAPAN-A3 Data for Landuse/landcover Mapping
Indonesian Journal of Geography
LAPAN-A3
Landsat-8
LULC
Maximum Likelihood
Neural Network
author_facet Zylshal Zylshal
Rachmad Wirawan
Dony Kushardono
author_sort Zylshal Zylshal
title Assessing the Potential of LAPAN-A3 Data for Landuse/landcover Mapping
title_short Assessing the Potential of LAPAN-A3 Data for Landuse/landcover Mapping
title_full Assessing the Potential of LAPAN-A3 Data for Landuse/landcover Mapping
title_fullStr Assessing the Potential of LAPAN-A3 Data for Landuse/landcover Mapping
title_full_unstemmed Assessing the Potential of LAPAN-A3 Data for Landuse/landcover Mapping
title_sort assessing the potential of lapan-a3 data for landuse/landcover mapping
publisher Universitas Gadjah Mada
series Indonesian Journal of Geography
issn 0024-9521
2354-9114
publishDate 2018-12-01
description LAPAN-A3 / LAPAN-IPB is the third generation of micro-satellite developed by Indonesian National Institute of Aeronautics and Space (LAPAN). The satellite carries a multispectral push-broom sensor that can record the earth's surface at the visible and near-infrared spectrum. Being launched in June 2016, there has no been many publications related to the use of LAPAN-A3 multispectral data for landuse/landcover (LULC) mapping. This paper aims to provide information regarding the use of LAPAN-A3 data for the LULC extraction maximum likelihood algorithm as well as neural network and then evaluate the results. The LAPAN-A3 image was geometrically corrected by using Landsat-8 OLI image as reference data. Three test areas with a size of 1200x945 pixels are then selected for pixel-based classification with the two aforementioned algorithms. For comparison, both LAPAN-A3 and Landsat-8 data were classified for 3 test areas. Accuracy assessment was performed on both datasets using manually interpreted SPOT-6 Pansharpened image as reference data. Preliminary results showed that LAPAN-A3 were able to extract  10 different LULC classes, comprises of built-up area, forest, rivers, fishponds, shrubs, wetland forests, rice fields, sea, agricultural land, and bare soil. The overall accuracy of LAPAN-A3 data is generally lower than Landsat-8, which ranges from 49.76% to 71.74%. These results illustrate the potential of LAPAN-A3 data to derive LULC information. The lack of necessary parameters to perform radiometric correction and blurring effect are several issues that need to be solved to improve the accuracy LULC.
topic LAPAN-A3
Landsat-8
LULC
Maximum Likelihood
Neural Network
url https://jurnal.ugm.ac.id/ijg/article/view/31449
work_keys_str_mv AT zylshalzylshal assessingthepotentialoflapana3dataforlanduselandcovermapping
AT rachmadwirawan assessingthepotentialoflapana3dataforlanduselandcovermapping
AT donykushardono assessingthepotentialoflapana3dataforlanduselandcovermapping
_version_ 1724906154584178688