tion,
)
ti-layer)
ation
that all sensor data
ation. In our case,
icted object surface,
This requires the re-
p is done using the
! measuring system,
expensive position-
to use given sensor
ind to fit the data ac-
in be identified auto-
strate this approach
ind location concept,
its. Fig. 4(a) shows
camera of the stereo
-form shaped sheet
the metal has been
have a resolution of
oarse height model
xpected, this coarse
yreaklines of the cut-
SS, since the cut-out
sity imagery, we can
ocessing. As shown
5 some spurious data
we use the larger of
of interest which are
lower left part of the
256 3D data points.
es very well, the data
a 1996
Figure 4: (a) original image of the object. (b) coarse resolution height model obtained by image matching. (c) result of
intensity image feature extraction, transformed into 3D space. (d) range data set. (e) result of fitting range data set to the
height model in (b). (f) overlay of features extracted from intensity and range images.
is also suited to assess the surface roughness. Since image matching to register both datasets and obtain the re-
we have for both the photogrammetric and the range data sult depicted in Fig. 4(e).
height model synchronous intensity information, we used
In a further step, we extracted features from the range
63
International Archives of Photogrammetry and Remote Sensing. Vol. XXXI, Part B5. Vienna 1996