In: Paparoditis N., Pierrot-Deseilligny M.. Mallet C., Tournaire O. (Eds). IAPRS. Vol. XXXVIII. Part 3A - Saint-Mandé, France, Septeniber 1-3, 2010
A NEW STRAIGHT LINE RECONSTRUCTION METHODOLOGY
FROM MULTI-SPECTRAL STEREO AERIAL IMAGES
A. O. Ok a ' *, J. D. Wegner b , C. Heipke b , F. Rottensteiner b , U. Soergel h . V. Toprak 3
a Dept, of Geodetic and Geographic Information Tech.. Middle East Technical University, 06531 Ankara. Turkey
- (oozgun, toprak)@metu.edu.tr
h Institute of Photogrammetry and Geoinformation, University of Hannover, 30167 Hannover, Germany
- (wegner, heipke, rottensteiner, soergel)@ipi.uni-hannover.de
Commission III - VVG 111/4
KEY WORDS: pair-wise line matching, line reconstruction, straight line extraction, stereo aerial images
ABSTRACT:
In this study, a new methodology for the reconstruction of line features from multispectral stereo aerial images is presented. We take full
advantage of the existing multispectral information in aerial images all over the steps of pre-processing and edge detection. To accurately
describe the straight line segments, a principal component analysis technique is adapted. The line to line correspondences between the stereo
images are established using a new pair-wise stereo matching approach. The approach involves new constraints, and the redundancy inherent
in pair relations gives us a possibility to reduce the number of false matches in a probabilistic manner. The methodology is tested over three
different urban test sites and provided good results for line matching and reconstruction.
1. INTRODUCTION
Reliable extraction of corresponding lines in overlapping images
can be used for different purposes such as 3D object extraction,
improving the automated triangulation, image registration, motion
analysis etc. Therefore, line matching is a challenging task, and still
a vivid field of research. Up to now, a significant number of
research papers have been published in this field; here, we only
review the methods developed to extract 3D line features from
aerial images. A useful classification of existing line matching
approaches was proposed by Schmid and Zisserman (1997). They
divided the line matching algorithms into two types, (i) those that
match individual line segments, and (ii) those that match groups of
line segments. In any case, the search space for matches has to be
pruned in some way in order to limit complexity. For most of the
studies, basic geometric parameters of line segments such as
orientation, length, mid-point, etc. are involved to filter the set of
correspondence hypotheses; however, probably the most preferred
constraint is the quadrilateral constraint generated using the
epipolar geometry (Collins et. al., 1998; Noronha and Nevada,
2001; Kim and Nevatia, 2004; Suveg and Vosselman, 2004). Some
studies also integrated the radiometric information around the line
segments along with the geometrical primitives (Henricsson, 1998;
Scholze et. al., 2000; Zhang and Baltsavias, 2000). Additional
constraints such as uniqueness and ordering (Suveg and Vosselman,
2004), figural continuity (Zhang, 2005) can also be included;
however, even for a simple stereo line matching problem, these
constraints are not sufficient to solve the image to image multi
correspondence problem. Thus, additional effort has been spent on
different algorithms to select the best line correspondences. For
example, dynamic programming (Yip and Ho; 1996), weighted
criterion functions (Henricsson, 1998), modal analyses (Park et. al.,
2000), and probability relaxation (Zhang and Baltsavias, 2000;
Zhang, 2005) are among those approaches. On the other hand,
additional view(s) can also be incoiporated in the line matching
stage; some examples can be found in Schmid and Zisserman
(1997), Collins et. al. (1998), Noronha and Nevatia (2001), and
Kim and Nevatia (2004).
Pair-wise stereo line matching is also introduced in several studies;
for example, Park et. al. (2000) proposed a matching approach
which takes into account only geometric relations between the
lines. However, they assumed that the lengths and angles between
the lines in a pair are almost exact copies of each other. Zhang and
Baltsavias (2000) proposed a pairwise edge matching approach
using relaxation labelling for 3D road reconstruction. Due to the
nature of the relaxation algorithms, the smoothing effects and the
issue of convergence with a large execution time could be the main
concerns. Noronha and Nevatia, (2001), and Kim and Nevatia
(2004) proposed a pair-wise approach based on the epipolar
geometiy. However, they utilize multiple images to reduce the pair
wise ambiguities and due to constraint of orthogonality, their
approach is restricted for the line pairs detected over rectilinear flat
objects.
So far, in a stereo environment, the ambiguity problem of line
matching is an issue that remain unsolved. The major problem
arises from the lack of measure(s) and/or constraint(s) for line
features that are invariant under different viewing conditions. Up to
now, the general attempt to reduce the ambiguity problem is to
strengthen the geometrical constraint by integrating one or more
additional views (Schmid and Zisserman, 1997; Collins et. al.,
1998; Noronha and Nevatia, 2001; Kim and Nevatia. 2004; Zhang.
2005). Several others utilized external DSMs (Jung and Paparoditis,
2003; Taillandier and Deriche, 2004) or supplementary matched
point features (Zhang, 2005) for both reducing the search space and
filtering out the matching ambiguities. Nevertheless, the final
matching performance of those algorithms is highly dependent and
determined by the efficiency and the quality of those auxiliary
datasets. On the other hand, the probabilistic relaxation based
methods (Zhang and Baltsavias, 2000; Zhang, 2005) utilize the
predefined local neighbourhood information which mostly suffer
from the piecewise smoothness constraints involved. Inevitably,
smoothing based on the local neighbourhood violates the standpoint
of height discontinuity (except artificial edges such as shadows etc.)
of the edges and the subsequent line matching.
One important different aspect from the review of the literature is
that while aerial images have been rich of multispectral
information, this fact was completely discarded or not efficiently
used during the low level processing such as filtering, edge
detection etc. However multispectral aerial images provide
opportunities to extract line features that cannot be detected in the
grayscale images (Scholze et. al., 2000, Koschan and Abidi, 2005)
due to several reasons, such as low contrast, accidental object
alignments etc.
2. METHODOLOGY
In this study, we introduce a new methodology for the 3D
reconstruction of line features from multispectral stereo aerial
images. In order to maximize the line detection completeness, we
take full advantage of the existing multispectral information in
aerial images throughout the steps of pre-processing and edge
Corresponding author.