The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Vol. XXXVII. Part B5. Beijing 2008
804
Figure 6. Error in dependence of the initial misalignment (left)
and computation time (right); Approach A is the
reference algorithm, approach B is the approach
contributed in this paper
5. CONCLUSIONS
We introduced an optimized approach for the pose correction of
patients in 6 degrees of freedom. First we relied on the whole
image domains to compute a 5 DOF estimation of the alignment
based on two 2D registrations and a low number of DRR
renderings. Then we improved accuracy and found the 6th
degree of freedom by optimizing the correlation of certain
image regions. By reduction of the data used in the X-ray
reconstruction process and by exclusion of image regions that
do not improve the matching result, we were able to reduce
pose estimation time and to preserve the accuracy of the
matching process. This can be beneficial especially for real time
matching applications, e.g. for alignment surveillance with
fluoroscopic imaging devices during the treatment. To achieve
even higher performance we suggest to combine our approach
with other techniques, for example the progressive lightfield
rendering introduced in (Rohlfmga et al., 2004).
For images that contain large areas of image contents that do
not occur in either the CT series or the X-ray image(s) our
approach successfully increased reliability of the pose detection
outcome. However, the method contributed here still has to
undergo additional testing, especially with respect to
radiometric differences of the image modalities and for the
variety of possible imaged body parts (e.g. for thorax or
abdomen datasets).
Further investigations should be made, if our approach
combined with a multi-resolutional matching could lead to
further improvements.
After all, we showed that the solution to achieve lower pose
detection times with similar accuracies can be to reduce the
image registration to the relevant sub-sets instead of improving
the rendering or matching technique itself. As we still use the
mutual information measure for registration of these sub-sets,
we still benefit from the stability of this measure.
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