Full text: Proceedings, XXth congress (Part 7)

  
International Archives of the Photogrammetry, Remote Sensing 
Similar to laser range scanners, the uncertainty is not a pure 
scalar function of distance to the target. A more complete 
camera model and exhaustive error representation can show that 
the error distribution is also skewed and oriented with the line 
of sight like laser scanners (see Figure 2). Nevertheless, to get 
lower uncertainty one needs geometric configurations (large 
baseline, shorter distance camera-target), a long focal length 
(not always possible), a low disparity measurement uncertainty 
and multiple images (in a multi-station convergent geometry). 
Camera model is covered by Atkinson, 1996. This reference 
gives the details of the collinearity equations for the three- 
dimensional case where both internal (focal length, scaling, 
distortions) and external (pose matrix containing both rotation 
and translation information of a camera) parameters of a multi- 
camera arrangement are considered. The complete system of 
equations can be solved by the bundle adjustment method. If 
the interior parameters are not available prior to this step 
(through an adequate camera calibration), a self-calibrating 
bundle adjustment is used. Actual lenses have optical 
aberrations. Of these aberrations (spherical, coma, etc.), only 
optical distortions are modelled in photogrammetry. Calibration 
of the internal parameters of a camera is critical for accurate 
measurements. Self-calibration is necessary if camera settings 
are unknown and vary between images. But to achieve accurate 
self-calibration, certain geometric configurations of images are 
needed. Since this is not guaranteed at the project site, and 
makes imaging more restrictive, it is sensible to decide on high- 
quality camera and take the images at fixed known settings. 
Many modern digital cameras can save à number of settings. 
We then calibrate in the lab at those settings using surveyed 
points. Figure 3 shows an example of an array of targets 
arranged on two walls that provide a 3D grid for camera 
calibration. 
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Figure 3 Calibration targets placed on walls. 
Fraser, 1987; Forstner, 1994: El-Hakim et al., 2003 discuss the 
need for accuracy evaluation tools for 3D image-based 
modelling and identify the key factors and critical 
configurations affecting this accuracy. Since internal evaluation 
using the covariance matrix may give too optimistic results 
(particularly for weak geometry, low redundancy, and presence 
of systematic errors), El-Hakim et al., 2003 propose a novel 
technique that creates simulated data based on the actual project 
data. The simulation was very useful in uncovering behaviour 
that the covariance matrix alone did not reveal. As a result, 
guidelines for some phases of 3D modelling from images are 
given. They focus on modelling relatively large structures like 
monuments and architectures for accurate documentation where 
and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004 
knowledge of uncertainty is important. Here are the most 
significant conclusions: 
* [n practice, it is difficult to achieve optimum network design. 
Therefore, the goal should be to avoid weak geometric 
configurations, low redundancy, and incorrect calibration. 
- To avoid low redundancy, points should be tracked over 4 or 
more images, at least two of which have baseline to depth ratio 
of 0.4 or larger, and over at least 6 images for closely spaced 
sequences. This is the most effective way to increase accuracy 
even for poor configurations. 
* Weak geometric configurations are directly function of the 
baseline to depth ratio, and the effect is more pronounced when 
this ratio is small (D/Z is less than 0.3). 
« Since conditions for accurate self-calibration may not be 
achievable in practice, separate camera calibration at the focal 
settings used in the actual project is recommended. 
« On natural features, the accuracy of the input data improves 
significantly as camera resolution increases, while the 
improvement is less significant on well-defined large resolved 
targets. 
* [n practical projects, using natural features and less than 
optimum configuration, but high redundancy and correct pre- 
calibration, we can expect about 1: 4000 to 1: 10000 accuracy. 
This should be reduced if practical conditions reduce the 
redundancy or the pointing precision. 
It is interesting to note that a 2D camera can address problems 
in a wide range of volumes. This is not the case for laser 
scanners as demonstrated in Section 2.1! 
3. CHARACTERIZATION OF 3D SYSTEMS 
3.1 Signal detection chain 
Beyond the 3D sensing technique used (see Section 2), the 
measurement of shape, appearance and motion parameters of an 
object using optical techniques depend on the characteristics of 
the different elements found in the measuring chain: 
e Sensor detection modes: incoherent versus coherent, 
current gain mechanism with Avalanche Photodiodes 
(APD) or Micro-channel Plates (MCP) 
e Light source spatial considerations: extended, point, 
line, grid, random patterns, coded pattern projection, 
scanned or not 
e Operating wavelength: single/broad spectrum, visible 
e Temporal considerations: AM or FM modulated, 
pulsed 
e Power versus dwell time (data rate) on target object 
Furthermore, we should add the following system level aspects: 
e Object modification: retro-targets, paint, abrasion 
e Object type: topology, material, size 
e Level of development: prototype, commercial 
e System location: laboratory, shop floor, remote site 
e User levels: novice, skilled, expert 
Combination of the above listed elements and aspects will 
determine the final system characteristics: 
e  Dimensionality: field-of-view (FOV), depth-of-field 
(DOF), standoff, maximum range 
e Spatial discrimination: resolution, uncertainty and 
accuracy 
e Costs to: purchase, use, repair and calibrate 
We now cover some of these characteristics in the following 
sections. 
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