Incorporating road and parcel data for object-based classification of detailed urban land covers from NAIP images
Abstract
A map showing various urban features, such as buildings, roads, and vegetation, is useful for a variety of urban planning applications. The objective of this study was to incorporate road and parcel GIS data as well as relevant expert knowledge to classify different urban land covers from 1-meter, 4-band NAIP images. Based on a hybrid simultaneous-classification and one-by-one-classification approach, a total of 14 urban classes are classified. The classification map has an overall accuracy of 90%, demonstrating a noticeable improvement over past comparable studies on detailed urban land cover classification.
Department(s)
Geography, Geology, and Planning
Document Type
Article
DOI
https://doi.org/10.1080/15481603.2014.963982
Keywords
urban land cover classification, object-based image analysis, OBIA, NAIP, Feature Analyst®
Publication Date
2014
Recommended Citation
Qiu, Xiaomin, Shuo-Sheng Wu, and Xin Miao. "Incorporating road and parcel data for object-based classification of detailed urban land covers from NAIP images." GIScience & Remote Sensing 51, no. 5 (2014): 498-520.
Journal Title
GIScience & Remote Sensing