International Archives of the Photo;
erammetry, Remote Sensing and Spatial Information Sciences
. Vol XXXV, Part B3. Istanbul 2004
C)
Example frames from thermal image videos with
homography estimation overlaid: a) Video 1, oblique
with very small field of view; b) Video II, oblique
with still small field of view; c) Video Ill, forward
looking, low flying and strong rotations.
For Video I there was a ground-truth file containing pose
estimates obtained by a priori GIS/INS recordings and posterior
back-section with geo-referenced building models. This enabled
the estimation of the projective distortion matrix and systematic
offset like outlined in Sect. 2.5. The same distortion parameters
were used for Video II. Video Ill was regarded as distortion-
free (but with camera rotations). The outlier-rate and the
standard deviations for inliers where estimated. Deviations are
given in relation to the length of the measured vectors. Outliers
are usually defined as having more than 100% deviation (except
Video II with rotation, were 500% were used for f).
Video I Video II Video III
Outlier-rate
Rotation-included 100% 71% 32%
Deviationt . | 385% 43%
Deviationn — | ——— 64% 41%
Deviation R= | -——— 5% 10%
Outlier-rate
Rotation-free 58% 16% 31%
Deviation t 78% 38% 56%
Deviation n 69% 39% 48% r
Table 2. Deviations and outlier-rates
4.2 Conclusion
Particularly, if long focal lengths are used the estimation
accuracy for the camera pose that can be achieved through full
homography decomposition may be rather poor. With Video I it
turned out a complete random number generator. Often INS-
sensors are mounted on the same platform anyway that will
give high precision. In these cases a rotation-free decomposition
is favoured with the homography being a homology or an
elation. The clation case is not exception because aircrafts are
often operated at level that means with the epipole on the
horizon. Therefore the eigen-space decomposition is not
recommended. Instead the rotation free case allows estimating
the epipole directly from the best sub-set of correspondences.
Subsequently the plane parameters can be inferred linearly and
unambiguously from the decomposition. Pose estimation by
decomposing the homography of the image flow measures
velocities over ground in relation to flight altitude and the
absolute nadir direction (at least if the scene plane is levelled).
It may complete other sensors like INS giving accelerations and
rotations, GPS giving absolute locations, speed sensors giving
speed in air, altimeters giving absolute height and magnetic
compasses giving geographic direction. Special care has to be
taken for non-projective distortions of the camera and lens,
particularly with thermal cameras of the non-focal-plane-array
type. Such distortions may well be misunderstood by the
decomposition as rotations. It is desirable to calibrate a
systematic offset from comparing the system to ground-truth.
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