Full text: Close-range imaging, long-range vision

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TOWARDS AUTOMATIC RELATIVE ORIENTATION FOR ARCHITECTURAL 
PHOTOGRAMMETRY 
Frank A. van den Heuvel 
Delft University of Technology 
Department of Geodesy 
Thijsseweg 11, 2629JA Delft, The Netherlands 
E-mail: F.A.vandenHeuvel@geo.tudelft.nl 
Commission V, WG V/2 
KEY WORDS: relative orientation, wide-baseline stereo, vanishing point detection, feature-based matching, architecture 
ABSTRACT 
A major challenge in close-range photogrammetry and computer vision is the automation of model acquisition from imagery. 
Determining the relative position and orientation of close-range imagery is usually the first step in a procedure for modelling, 
assuming that the camera has been calibrated beforehand. An essential part of an orientation procedure based on image content is the 
establishment of correspondence between the images. The problem at hand is to find correspondence between two convergent 
images and their relative orientation simultaneously and automatically. In computer vision this is called the wide-baseline stereo 
problem. For the approach presented in this paper, a new feature-based matching procedure is designed that exploits the 
characteristics of the application by applying generic knowledge of the construction of the building. The procedure relies on rigorous 
statistical testing of constraints on the observations. The outline of the procedure is presented, as well as the results of experiments. 
Relative orientation was successfully detected for two images with an angle of 65 degree between the optical axes. It is shown that 
the procedure is robust with respect to unfavourable characteristics of the application, such as occlusions and repetitive structures in 
the building facades. 
1. INTRODUCTION 
Determination of the relative orientation of images is a 
prerequisite for object modelling. Although relative orientation 
of two images includes relative position, it however excludes 
the distance between the images and thus the scale of the model 
remains undetermined. Camera calibration, i.e. the 
determination of interior orientation (intrinsic) parameters, is 
also essential, however, in photogrammetry cameras are usually 
pre-calibrated. In this paper, the camera is assumed to be 
calibrated, although imagery of unknown interior orientation 
can be handled by applying a method for the estimation of 
interior orientation parameters from vanishing points (van den 
Heuvel, 1999). 
Without using external measurement methods, such as the 
Global Positioning System (GPS), relative orientation of two 
images is based on corresponding features in the images. With 
only two images, we have to rely on point features because 
there is no information on relative orientation in corresponding 
image lines. With at least seven corresponding points available, 
the five parameters of relative orientation (in computer vision; 
the parameters of the essential matrix) can be determined by a 
direct solution (Fórstner, 2000). Automatic relative orientation, 
therefore, is equivalent to solving the correspondence problem 
automatically. This topic has been extensively studied in 
photogrammetry, especially aerial photogrammetry (Heipke, 
1997), and in computer vision (Pritchett and Zisserman, 1998), 
(Matas et al., 2001). 
Our goal is the automatic relative orientation of two widely 
separated views, i.e. (strongly) convergent imagery. In 
computer vision this problem is known as wide-baseline stereo. 
Generic knowledge of the architectural application field is 
applied in the method and this facilitates a robust solution of the 
correspondence problem. For the method proposed here, 
prerequisites for the image acquisition are limited to: 
- No major image rotation around the optical axis (k less 
than 45 degree). 
- Image tilt (rotation around x-axis, œ) less than 45 degree. 
- Overlap between the two images. 
The automatic procedure consists of three main steps (Figure 
1). In each step different types of a priori object knowledge, i.e. 
knowledge on the construction of the building, are applied. 
Firstly, straight lines are extracted from the two images. This 
implies that the majority of building edges be assumed straight, 
and that lens distortion is limited or removed in advanced by 
resampling the image. Secondly, vanishing points are detected 
for each image. The building is assumed to be built along three 
orthogonal axes. The detection of at least two vanishing points 
related to these object orientations, results in an ambiguous 
orientation of the image relative to the building, and a set of 
edges of which the object orientation is known. In the third and 
last step, edges are intersected to points in image space, and 
finally point correspondence and relative orientation are 
detected simultaneously. The paper concentrates on this last 
step that relies on the assumption of planar facades, in which 
the object points recede. 
The remainder of the paper is structured as follows. After 
discussing related research in the next section, the developed 
procedure for automatic relative orientation is described in 
section 3. In section 4, results from several experiments are 
analysed. Conclusions are drawn in section 5. 
2. RELATED RESEARCH 
In aerial photogrammetry the automatic relative orientation (as 
a part of automatic triangulation) is commonly available in 
digital photogrammetric workstations (Heipke, 1997). More and 
more, external measurement devices — usually an integration of 
GPS and INS — are used. For a range of aerial applications they 
make triangulation even superfluous. External measurement of 
image orientation is also used in close-range photogrammetry 
(Teller, 2001). For finding correspondence from the image 
itself, usually a feature-based matching technique is applied at 
different levels of the image pyramid. Wang (Wang, 1998) 
presents a structural matching method that requires an image 
pyramid. The method is applied to aerial images, as well as to 
terrestrial images of a building. In (Habib and Kelley, 2001) a 
robust feature-based method is described that does not require 
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