Image Segmentation Parameter Optimization Considering Within- and Between-Segment Heterogeneity at Multiple Scale Levels: Test Case for Mapping Residential Areas Using Landsat Imagery

Multi-scale/multi-level geographic object-based image analysis (MS-GEOBIA) methods are becoming widely-used in remote sensing because single-scale/single-level (SS-GEOBIA) methods are often unable to obtain an accurate segmentation and classification of all land use/land cover (LULC) types in an ima...

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Main Authors: Brian A. Johnson, Milben Bragais, Isao Endo, Damasa B. Magcale-Macandog, Paula Beatrice M. Macandog
Format: Article
Language:English
Published: MDPI AG 2015-10-01
Series:ISPRS International Journal of Geo-Information
Subjects:
Online Access:http://www.mdpi.com/2220-9964/4/4/2292
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spelling doaj-0facfcf4c59a43c8befb0fe42c8f31522020-11-24T22:08:56ZengMDPI AGISPRS International Journal of Geo-Information2220-99642015-10-01442292230510.3390/ijgi4042292ijgi4042292Image Segmentation Parameter Optimization Considering Within- and Between-Segment Heterogeneity at Multiple Scale Levels: Test Case for Mapping Residential Areas Using Landsat ImageryBrian A. Johnson0Milben Bragais1Isao Endo2Damasa B. Magcale-Macandog3Paula Beatrice M. Macandog4Institute for Global Environmental Strategies, 2108-11 Kamiyamaguchi, Hayama, Kanagawa 240-0115, JapanInstitute of Biological Sciences, University of the Philippines Los Baños, College, Laguna 4031, PhilippinesInstitute for Global Environmental Strategies, 2108-11 Kamiyamaguchi, Hayama, Kanagawa 240-0115, JapanInstitute of Biological Sciences, University of the Philippines Los Baños, College, Laguna 4031, PhilippinesInstitute of Biological Sciences, University of the Philippines Los Baños, College, Laguna 4031, PhilippinesMulti-scale/multi-level geographic object-based image analysis (MS-GEOBIA) methods are becoming widely-used in remote sensing because single-scale/single-level (SS-GEOBIA) methods are often unable to obtain an accurate segmentation and classification of all land use/land cover (LULC) types in an image. However, there have been few comparisons between SS-GEOBIA and MS-GEOBIA approaches for the purpose of mapping a specific LULC type, so it is not well understood which is more appropriate for this task. In addition, there are few methods for automating the selection of segmentation parameters for MS-GEOBIA, while manual selection (i.e., trial-and-error approach) of parameters can be quite challenging and time-consuming. In this study, we examined SS-GEOBIA and MS-GEOBIA approaches for extracting residential areas in Landsat 8 imagery, and compared naïve and parameter-optimized segmentation approaches to assess whether unsupervised segmentation parameter optimization (USPO) could improve the extraction of residential areas. Our main findings were: (i) the MS-GEOBIA approaches achieved higher classification accuracies than the SS-GEOBIA approach, and (ii) USPO resulted in more accurate MS-GEOBIA classification results while reducing the number of segmentation levels and classification variables considerably.http://www.mdpi.com/2220-9964/4/4/2292GEOBIAobject-based image analysisLandsat 8Moran’s Irandom forest
collection DOAJ
language English
format Article
sources DOAJ
author Brian A. Johnson
Milben Bragais
Isao Endo
Damasa B. Magcale-Macandog
Paula Beatrice M. Macandog
spellingShingle Brian A. Johnson
Milben Bragais
Isao Endo
Damasa B. Magcale-Macandog
Paula Beatrice M. Macandog
Image Segmentation Parameter Optimization Considering Within- and Between-Segment Heterogeneity at Multiple Scale Levels: Test Case for Mapping Residential Areas Using Landsat Imagery
ISPRS International Journal of Geo-Information
GEOBIA
object-based image analysis
Landsat 8
Moran’s I
random forest
author_facet Brian A. Johnson
Milben Bragais
Isao Endo
Damasa B. Magcale-Macandog
Paula Beatrice M. Macandog
author_sort Brian A. Johnson
title Image Segmentation Parameter Optimization Considering Within- and Between-Segment Heterogeneity at Multiple Scale Levels: Test Case for Mapping Residential Areas Using Landsat Imagery
title_short Image Segmentation Parameter Optimization Considering Within- and Between-Segment Heterogeneity at Multiple Scale Levels: Test Case for Mapping Residential Areas Using Landsat Imagery
title_full Image Segmentation Parameter Optimization Considering Within- and Between-Segment Heterogeneity at Multiple Scale Levels: Test Case for Mapping Residential Areas Using Landsat Imagery
title_fullStr Image Segmentation Parameter Optimization Considering Within- and Between-Segment Heterogeneity at Multiple Scale Levels: Test Case for Mapping Residential Areas Using Landsat Imagery
title_full_unstemmed Image Segmentation Parameter Optimization Considering Within- and Between-Segment Heterogeneity at Multiple Scale Levels: Test Case for Mapping Residential Areas Using Landsat Imagery
title_sort image segmentation parameter optimization considering within- and between-segment heterogeneity at multiple scale levels: test case for mapping residential areas using landsat imagery
publisher MDPI AG
series ISPRS International Journal of Geo-Information
issn 2220-9964
publishDate 2015-10-01
description Multi-scale/multi-level geographic object-based image analysis (MS-GEOBIA) methods are becoming widely-used in remote sensing because single-scale/single-level (SS-GEOBIA) methods are often unable to obtain an accurate segmentation and classification of all land use/land cover (LULC) types in an image. However, there have been few comparisons between SS-GEOBIA and MS-GEOBIA approaches for the purpose of mapping a specific LULC type, so it is not well understood which is more appropriate for this task. In addition, there are few methods for automating the selection of segmentation parameters for MS-GEOBIA, while manual selection (i.e., trial-and-error approach) of parameters can be quite challenging and time-consuming. In this study, we examined SS-GEOBIA and MS-GEOBIA approaches for extracting residential areas in Landsat 8 imagery, and compared naïve and parameter-optimized segmentation approaches to assess whether unsupervised segmentation parameter optimization (USPO) could improve the extraction of residential areas. Our main findings were: (i) the MS-GEOBIA approaches achieved higher classification accuracies than the SS-GEOBIA approach, and (ii) USPO resulted in more accurate MS-GEOBIA classification results while reducing the number of segmentation levels and classification variables considerably.
topic GEOBIA
object-based image analysis
Landsat 8
Moran’s I
random forest
url http://www.mdpi.com/2220-9964/4/4/2292
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