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Aerial Imagery-based (Figure 2(a)):
Three bands (R, G, B): To remove noises in the RGB image,
convolution operation must be operated. In this paper, we use
median convolution, a technique aiming at reducing image
noise without removing significant parts of the image content,
typically edges, lines or other details that are important for the
interpretation of the image (Perona and Malik, 1990). After
mean convolution, bands red (R), green (G) and blue (B) are
used as three individual spectral features.
Grey-level Co-occurrence Matrix (GLCM); GLCM proposed by
Julesz (1962) can be used to calculate several statistical
measures, such as contrast (Cont.), dissimilarity (Diss.),
homogeneity (Homo.), entropy (Ent.), mean (Mean), variance
(Var), second-moment(S-M) and correlation (Corr) for
representing specific textural characteristics of the processed
image.
Lidar Data
Although a 2D lidar range image is used in the presented land-
use classification scheme, lidar height-based features are
calculated by 3D original point clouds in a given spherical
neighbourhood. Mainly determined by the point density, the
radius of the given sphere is required to guarantee at least 6
points to get involved in processing lidar features. As a result,
height-based features can be computed.
Height-based features (Figure 2(c))
o Height difference (Height-Diff): The distance is between
the current point and the lowest point in a cyclone with
radium of about 30m.
o Normalized height ( nDSM=DSM-DTM): This feature will
help distinguish elevated objects from the ground or near-
ground objects (Haala and Walter, 1999).
Local hei ht variation (Local-Hei-Var,
the absolut
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XXXIX-B7, 2012
XXII ISPRS Congress, 25 August — 01 September 2012, Melbourne, Australia
©
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distance between the maximum and minimum height
values in 3*3 pixels or 3*3 m): This feature will assist in
discriminating ground and non-ground objects.
o Height difference between echoes (FL-Diff- First echo -
last echo): This feature will help distinguish high-rise
penetrable vegetation.
o Normalized Difference (FL-NDiff, a lidar-based vegetation
(Hrirst echo ^ Hrast echo) Similar to
index): It is calculated by TER d
NDVI (Normalized Difference Vegetation Index) in
multispectral image classification, FL-NDiff will highlight
vegetation (Arefi et al., 2003).
o Deviation angle of plane normal vector from the vertical
direction (P-Deviation-Ang): This feature will assist in
discriminating the ground with small values of deviation
angles.
o Distance from the current point to the local estimated plane
(P-Normalized-Var): This feature reflects the local height
variation that can be used for the discrimination of the
ground and non-ground objects.
o Eigen-based features (Anisotropy, Linearity, Planarity,
Sphericity): The eigenvalue related features are defined as
the spatial features of each point by calculating a variance-
covariance matrix of its neighbours. It is another auxiliary
indicator for distinguishing planes, edges, corners and
volumes (Chehata et al., 2009).
Intensity-based features (Figure 2(b)):
o Intensity image: Analogue to a grey image, GLCM related
measures are calculated.
o Lidar-TVI (Transformed vegetation index): It is calculated
Lidar Intensity -RED ;
by DIT 4 0.5 based on Red band of aerial
Lidar Intensity+RED
imagery and intensity values of lidar data.
GLCM-SM
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