INTEGRATION OF DIGITAL IMAGE MATCHING AND MULTI IMAGE SHAPE FROM SHADING
C. Heipke
Chair for Photogrammetry and Remote Sensing
Technical University Munich
Arcisstr. 21, D-8000 Munich 2, Germany
Tel: +49-89-2105 2671; Fax: +49-89-280 95 73; Telex: 522854 tumue d
E-mail: heipke@photo.verm.tu-muenchen.de
Commission III
ABSTRACT:
Classical shape from shading (SFS) is based on the
analysis of the intensity values of a single digital image in
order to derive three dimensional information of the
depicted scene. It involves the orthographic projection
for the transformation from object to image space and
has been successfully applied to weakly textured images.
In general the illumination conditions must be known,
Lambertian reflection and constant albedo must be as-
sumed for the object surface, and only surface slopes can
be determined. Digital image matching for photogram-
metric processing on the other hand needs at least two
images of the same scene taken from different view
points and the images must be well textured. Therefore,
the two methods are complementary to each other, and
a combined model should yield better results than any
of the two separate ones.
In this paper a new global approach is presented inte-
grating digital image matching and multi image SFS in
object space. In aleast squares adjustment the unknowns
(geometric and radiometric parameters of the object
surface) are estimated from the pixel intensity values and
control information. The perspective projection is used
for the transformation from object to image space.
The approach is investigated using synthetic images. The
main results of this study are the following:
- Heights of a digital terrain model (DTM) or a digital
surface model (DSM) instead of surface slopes can
be calculated directly using multi image SFS alone
or the combined approach (in this paper the term
"DTM" denotes a classical DTM as well as a DSM).
- There is no need for conjugate points in the multi
image SFS approach. This is especially important,
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since in weakly textured images the correspondence
problem is extremely hard to solve due to the lack of
large image intensity gradients.
- If variable albedo is present in parts of the object
surface only the combined approach yields correct
results. Multi image SFS and digital image matching
alone fail in this case.
Key Words: digital photogrammetry, shape from sha-
ding, image matching, image analysis, DTM/DSM, theo-
ry
1. INTRODUCTION
One of the main difficulties of digital photogrammetry
presents the automatic measurement of image coordina-
tes of conjugate points for the computation of object
space coordinates. This problem is referred to as "digital
image matching". It has been a focus of research for
nearly thirty years. Early work goes back to Sharp et al.
/1965/. During the years many algorithms have been
suggested for this task. The state-of-the-art of digital
image matching is the use of a global, multi image, object
based approach incorporating a hierarchical procedure
to provide initial values for the unknown parameters.
While feature based matching is faster and seems to be
more robust, least squares matching has been found to
be more accurate. However, it can be observed, that all
algorithms, regardless of their origin in detail, heavily
rely on the presence of image texture. In the absence of
sufficient image intensity gradients, every matching al-
gorithm will fail to produce correct results.
The rarity of high resolution stereoscopic images of
planetary surfaces as well as research in computer vision
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