Object-Based Urban Land Cover Extraction Using the Synergy of Lidar Data and Very High Resolution Multispectral Imagery
Özet
Up-to-date urban land cover information plays a critical role for urban planning and
management. In this study, an approach was presented for classifying urban land cover
types using the integration of very high resolution (VHR) multispectral aerial imagery
and airborne discrete return LiDAR (Light Detection and Ranging) data. The integration
of aerial imagery and LiDAR data was conducted during object-oriented (OO)
classification. Image segmentation prior to OO classification was performed using the
Simple Non-Iterative Clustering (SNIC) algorithm, which is a state-of-the-art image
segmentation algorithm that exhibits the advantages of efficiency and high accuracy. The
features used in the classification consist of the optical bands of aerial imagery, an NDVI
index and seven grey-level co-occurrence matrix (GLCM) texture metrics (contrast,
dissimilarity, homogeneity, second moment, entropy, variance, correlation) calculated
from the optical bands, one normalized digital surface model (nDSM) and one intensity
band derived from LiDAR data. Adaptive Boosting (AdaBoost), a machine learning
algorithm, was selected as the classifier. The sensitivitiy of AdaBoost to feature selection
(FS), by applying recursive feature elimination (RFE) method, was also investigated. The
methods were applied to fused VHR aerial imagery and LiDAR data of the city of Hradec
Kralove, Czech Republic. Three sub-areas were chosen as the study areas. The results
demonstrated that the fusion of aerial imagery and the LiDAR derived nDSM and
intensity image features significatly improved the results (overall accuracy-OA) up to
24.7%. The highest classification accuracy achieved (OA = 85.5%) was based on the
selected best features (21 features) from 56 input features. The second highest
classification accuracy (OA = 84.8%) obtained was based on the fused dataset of aerial
imagery and the LiDAR derived nDSM and intensity image features. The integrated
dataset of aerial imagery and the LiDAR derived features proved to be effective in urban
land cover classification. However, combining object-based GLCM texture measures in
the AdaBoost classifier reduced the classification accuracy.