Object-Based Classification of Ikonos Imagery for Mapping Large-Scale Vegetation Communities in Urban Areas
Effective assessment of biodiversity in cities requires detailed vegetation maps.To date, most remote sensing of urban vegetation has focused on thematically coarse landcover products. Detailed habitat maps are created by manual interpretation of aerialphotographs, but this is time consuming and cos...
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doaj-3faed1c04248430bb5803476aba5a4292020-11-24T21:39:30ZengMDPI AGSensors1424-82202007-11-017112860288010.3390/s7112860Object-Based Classification of Ikonos Imagery for Mapping Large-Scale Vegetation Communities in Urban AreasAlbert k. ChongJagannath AryalRenaud MathieuEffective assessment of biodiversity in cities requires detailed vegetation maps.To date, most remote sensing of urban vegetation has focused on thematically coarse landcover products. Detailed habitat maps are created by manual interpretation of aerialphotographs, but this is time consuming and costly at large scale. To address this issue, wetested the effectiveness of object-based classifications that use automated imagesegmentation to extract meaningful ground features from imagery. We applied thesetechniques to very high resolution multispectral Ikonos images to produce vegetationcommunity maps in Dunedin City, New Zealand. An Ikonos image was orthorectified and amulti-scale segmentation algorithm used to produce a hierarchical network of image objects.The upper level included four coarse strata: industrial/commercial (commercial buildings),residential (houses and backyard private gardens), vegetation (vegetation patches larger than0.8/1ha), and water. We focused on the vegetation stratum that was segmented at moredetailed level to extract and classify fifteen classes of vegetation communities. The firstclassification yielded a moderate overall classification accuracy (64%, κ = 0.52), which ledus to consider a simplified classification with ten vegetation classes. The overallclassification accuracy from the simplified classification was 77% with a κ value close tothe excellent range (κ = 0.74). These results compared favourably with similar studies inother environments. We conclude that this approach does not provide maps as detailed as those produced by manually interpreting aerial photographs, but it can still extract ecologically significant classes. It is an efficient way to generate accurate and detailed maps in significantly shorter time. The final map accuracy could be improved by integrating segmentation, automated and manual classification in the mapping process, especially when considering important vegetation classes with limited spectral contrast.http://www.mdpi.com/1424-8220/7/11/2860/object-based classificationremote sensingcitiesNew Zealandbiodiversityhabitat. |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Albert k. Chong Jagannath Aryal Renaud Mathieu |
spellingShingle |
Albert k. Chong Jagannath Aryal Renaud Mathieu Object-Based Classification of Ikonos Imagery for Mapping Large-Scale Vegetation Communities in Urban Areas Sensors object-based classification remote sensing cities New Zealand biodiversity habitat. |
author_facet |
Albert k. Chong Jagannath Aryal Renaud Mathieu |
author_sort |
Albert k. Chong |
title |
Object-Based Classification of Ikonos Imagery for Mapping Large-Scale Vegetation Communities in Urban Areas |
title_short |
Object-Based Classification of Ikonos Imagery for Mapping Large-Scale Vegetation Communities in Urban Areas |
title_full |
Object-Based Classification of Ikonos Imagery for Mapping Large-Scale Vegetation Communities in Urban Areas |
title_fullStr |
Object-Based Classification of Ikonos Imagery for Mapping Large-Scale Vegetation Communities in Urban Areas |
title_full_unstemmed |
Object-Based Classification of Ikonos Imagery for Mapping Large-Scale Vegetation Communities in Urban Areas |
title_sort |
object-based classification of ikonos imagery for mapping large-scale vegetation communities in urban areas |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2007-11-01 |
description |
Effective assessment of biodiversity in cities requires detailed vegetation maps.To date, most remote sensing of urban vegetation has focused on thematically coarse landcover products. Detailed habitat maps are created by manual interpretation of aerialphotographs, but this is time consuming and costly at large scale. To address this issue, wetested the effectiveness of object-based classifications that use automated imagesegmentation to extract meaningful ground features from imagery. We applied thesetechniques to very high resolution multispectral Ikonos images to produce vegetationcommunity maps in Dunedin City, New Zealand. An Ikonos image was orthorectified and amulti-scale segmentation algorithm used to produce a hierarchical network of image objects.The upper level included four coarse strata: industrial/commercial (commercial buildings),residential (houses and backyard private gardens), vegetation (vegetation patches larger than0.8/1ha), and water. We focused on the vegetation stratum that was segmented at moredetailed level to extract and classify fifteen classes of vegetation communities. The firstclassification yielded a moderate overall classification accuracy (64%, κ = 0.52), which ledus to consider a simplified classification with ten vegetation classes. The overallclassification accuracy from the simplified classification was 77% with a κ value close tothe excellent range (κ = 0.74). These results compared favourably with similar studies inother environments. We conclude that this approach does not provide maps as detailed as those produced by manually interpreting aerial photographs, but it can still extract ecologically significant classes. It is an efficient way to generate accurate and detailed maps in significantly shorter time. The final map accuracy could be improved by integrating segmentation, automated and manual classification in the mapping process, especially when considering important vegetation classes with limited spectral contrast. |
topic |
object-based classification remote sensing cities New Zealand biodiversity habitat. |
url |
http://www.mdpi.com/1424-8220/7/11/2860/ |
work_keys_str_mv |
AT albertkchong objectbasedclassificationofikonosimageryformappinglargescalevegetationcommunitiesinurbanareas AT jagannatharyal objectbasedclassificationofikonosimageryformappinglargescalevegetationcommunitiesinurbanareas AT renaudmathieu objectbasedclassificationofikonosimageryformappinglargescalevegetationcommunitiesinurbanareas |
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