International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B4. Istanbul 2004
detection’ approaches are proposed in this paper. À first
approach is to find candidates of building shape changes,
especially height changes, for large buildings. À second
approach is to detect candidates of building's shape and
texture changes for small buildings.
5.1 Coarse change detection
Candidates of building shape changes are detected by
comparing DSM (or height information) of existing 3D
building data with DSM generated from TLS image.
Coarse changes in urban areas are detected, which is
probability of shape change. This preliminary
information is assigned to each building.
In fact, when there is a building demolition, a building
height is changed from an existing level to a ground level.
When a new building is built up, the building height is
changed along an opposite direction. Moreover, when a
building is reconstructed, there are some changes of
building height.
This method is effective to detect changes of large
buildings such as department stores or multi stories
parking lots, etc. in a viewpoint of processing time.
However, most of small building changes cannot be
detected since they are built on full lot size due to very
small lot area. Therefore, fine change detection is applied
to all buildings including these small buildings.
5.2 Fine change detection
Existing 3D data are projected into TLS images. Building
changes are detected by using changes of textures in the
TLS images and the preliminary information. Not only
roofs but also walls are referred in this processing.
Building shadows are extracted from TLS images by
using the temporal information of the data acquisition.
TLS images are enhanced not to influence the texture
change detection. Details are described in the followings.
I) Decomposition
Existing 3D data are decomposed to roof polygons and
wall polygons as Figure.7 shows. A classification of
roofs and walls is done based on the roof model, which
represents buildings by using roof boundaries, in the
SNAKE-aided 3D data refinement processing.
2) Back-projection
These polygons are back-projected into visible TIS
images; since occlusion, which is caused by surrounding
buildings, can be guessed by a geometric processing.
Generally, roof textures are back-projected to a TLS
nadir image, and wall textures are back-projected to TLS
forward / backward images. When non-textured polygons
exist or TLS images do not have corresponding areas
with polygons, they are not back-projected to TLS
images.
Existing 3D data
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‘Decomposition’ NT
Wall polygons
Roof polygons
Forward Nadir image Backward
image image
Figure. 7. Texture reference
3) Polygon based area correlation
A polygon based area correlation is calculated between
existing 3D data and TLS images. An equation of the
polygon based area correlation including parameters is
described in eq. 1.
Ctotal = F@ Cr -fà* Cw) 1 ER FQ) (eq. 1)
Nr
Cr =3 (Crk) Nr
kzl
Nw
Cw =) (Cwk)/ Nw
k=l
where
Crk : Correlation coefficient in each textured roof polygon
Cwk : Correlation coefficient in each textured wall polygon
Nr : Number of textured roof polygons
Nw : Number of textured wall polygons
fÔ,/@; Weight parameters
Ctotal; Result value for for change detection
A theory threshold value of a correlation coefficient in
building change detection is not approximately 1.00.
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