TY - JOUR
T1 - Object-based land-cover classification for metropolitan Phoenix, Arizona, using aerial photography
AU - Li, Xiaoxiao
AU - Myint, Soe
AU - Zhang, Yujia
AU - Galletti, Chritopher
AU - Zhang, Xiaoxiang
AU - Turner, Billie
N1 - Funding Information: This project was supported by the National Science Foundation under Grant No. BCS-1026865 , Central Arizona–Phoenix Long-Term Ecological Research (CAP LTER) and undertaken through its affiliated Environmental Remote Sensing and Geoinformatics Lab (ERSG) and the Global Institute of Sustainability . Additional support was furnished by the Gilbert F. White Environment and Society endowment. We thank the reviewers for their detailed critiques of drafts of this paper.
PY - 2014
Y1 - 2014
N2 - Detailed land-cover mapping is essential for a range of research issues addressed by the sustainability and land system sciences and planning. This study uses an object-based approach to create a 1 m land-cover classification map of the expansive Phoenix metropolitan area through the use of high spatial resolution aerial photography from National Agricultural Imagery Program. It employs an expert knowledge decision rule set and incorporates the cadastral GIS vector layer as auxiliary data. The classification rule was established on a hierarchical image object network, and the properties of parcels in the vector layer were used to establish land cover types. Image segmentations were initially utilized to separate the aerial photos into parcel sized objects, and were further used for detailed land type identification within the parcels. Characteristics of image objects from contextual and geometrical aspects were used in the decision rule set to reduce the spectral limitation of the four-band aerial photography. Classification results include 12 land-cover classes and subclasses that may be assessed from the sub-parcel to the landscape scales, facilitating examination of scale dynamics. The proposed object-based classification method provides robust results, uses minimal and readily available ancillary data, and reduces computational time.
AB - Detailed land-cover mapping is essential for a range of research issues addressed by the sustainability and land system sciences and planning. This study uses an object-based approach to create a 1 m land-cover classification map of the expansive Phoenix metropolitan area through the use of high spatial resolution aerial photography from National Agricultural Imagery Program. It employs an expert knowledge decision rule set and incorporates the cadastral GIS vector layer as auxiliary data. The classification rule was established on a hierarchical image object network, and the properties of parcels in the vector layer were used to establish land cover types. Image segmentations were initially utilized to separate the aerial photos into parcel sized objects, and were further used for detailed land type identification within the parcels. Characteristics of image objects from contextual and geometrical aspects were used in the decision rule set to reduce the spectral limitation of the four-band aerial photography. Classification results include 12 land-cover classes and subclasses that may be assessed from the sub-parcel to the landscape scales, facilitating examination of scale dynamics. The proposed object-based classification method provides robust results, uses minimal and readily available ancillary data, and reduces computational time.
KW - Aerial photography
KW - Classification system
KW - Land cover
KW - Object-based image analysis
KW - Phoenix
KW - Urban
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U2 - 10.1016/j.jag.2014.04.018
DO - 10.1016/j.jag.2014.04.018
M3 - Article
SN - 1569-8432
VL - 33
SP - 321
EP - 330
JO - International Journal of Applied Earth Observation and Geoinformation
JF - International Journal of Applied Earth Observation and Geoinformation
IS - 1
ER -