The characteristics of the network solution are as follows:
(1) ifthere are multiple baselines of similar length, the
different reference stations have the effect of
repeated measurements.
(2) ifthe baselines are different in length, and thus the
quality of the GPS/IMU observations differs, the
network solution yields an average result, which is
obviously not as accurate as the one for the shortest
baseline, but better than the one for the longest
baseline.
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2
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if there are short term errors in any of the baselines,
the network solution is able to reduce, and perhaps
to eliminate, the effect of these errors.
In any case, multiple baselines lead to a larger redundancy of
the adjustment system, and thus to an increased possibility
for detecting gross errors, and to a more reliable solution for
the parameters of exterior orientation. Of course, any
problems connected to the GPS receiver in the aircraft cannot
be detected, neither can the standard deviation of computed
object space coordinates be improved, if the limiting factor is
the measurement accuracy of the corresponding ima
coordinates, and not the exterior orientation.
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3 Test data
In order to analyse our model we used the data of the OEEPE
test “Integrated sensor orientation” (see Heipke et al. 2002a;
b and Nilsen 2002). For this paper we used only a subset of
the test data.
The test was flown over the test field Fredrikstad in Southern
Norway. The test field has a size of approximately 4,5*6 km“
and contains about 50 signalised GCP with object space
coordinates known to sub-centimetre accuracy.
The aircraft was flown at an altitude of 1.600 meters above
ground resulting in an image scale of approximately
1:10.000. Two flights were selected: the calibration flight
included four strips, two strips in west-east and east-west
direction and two further strips in north-south and south-
north direction; and a project flight with five strips in north-
south and south-north direction. In order to achieve a good
initial alignment for the IMU axes with the gravity field, the
aircraft made an S-like turn before the first flight strip. Image
coordinates of a sufficient number of tie points and of all
GCP were measured manually on an analytical plotter.
The selected GPS/IMU aircraft equipment was a POS/AV
510-DG from Applanix, consisting of a high quality off-the-
shelf navigation grade IMU as typically used in precise
airborne position and attitude determination. The POS/DG
equipment was tightly coupled to a wide angle Leica RC30,
the latter mounted on the gyro-stabilised platform PAV30.
The PAV30 data and thus rotations of the camera and the
IMU relative to the plane body were recorded at 200 Hz and
introduced into further processing. The claimed accuracy is
better than 0.1 m for the IMU position, and better than 0.005
degree in roll and pitch, and better than 0.008 degree in yaw
(Applanix 1999).
During data acquisition several GPS reference stations were
used and the GPS equipment in the aircraft and on the
reference stations consisted of dual frequency receivers
performing differential carrier phase measurements at 2 Hz.
The following reference stations were used for the results
reported in this paper:
- Raade (baseline 8 — 30 km),
Moss (baseline 15 — 38 km),
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B1. Istanbul 2004
- Torp (20-50 km baseline),
- Soer (25-60 km baseline),
- Stavanger (baseline approx. 307 km).
The different values for the baselines arc caused by the flight
pattern, for Stavanger this effect amounts to only 10 % of the
length and is negligible. Figure 1 shows the accuracy of the
GPS-position for the reference station Raade for the various
strips of the project flight. In the upper part of the figure, the
PDOP (position dilution of precision), a common descriptor
for GPS position accuracy (Seeber 2003) can be seen as the
straight line, the baseline length is the more undulated line. It
is clearly visible that the PDOP increases sharply during the
first strip indicating some problem in the GPS signal, and
only decreases after the fourth strip. In the lower part, the
resulting GPS accuracies in X, Y, and Z derived from
processing different satellites (but no IMU data) are shown.
The correlation between the large PDOP value and the large
c
standard deviations for the GPS position can clearly be seen.
Ref Sation Raad
Tirae (sec )
Figure 1: Accuracy of GPS position, reference station
Raade
The small peaks in the X,Y and Z accuracies in the lower part
of figure 1 can be smoothed when introducing IMU data
during Kalman filtering. It is not possible, however, to
compensate the weaker accuracy over the longer time period
in the same way. Only a network solution or additional GCP
can overcome this problem.
4 Sensor calibration
Based on the model explained in section 2 and the calibration
flight data described in section 3 we performed a calibration
of the equipment used in the test. The displacement vector
between the GPS antenna and the IMU centre of mass was
determined before the flight mission using conventional
surveying techniques and was used as a constant lever arm
correction.
Since we only had one flying height, we selected the six
standard parameters (boresight misalignment and GPS offset
parameters). In addition, we solved for a time
synchronisation offset. In the adjustment, we introduced
twelve GCP, together with sufficient, well distributed image
coordinates of tie points together with the pre-processed
position and attitude data. Initial values for all unknowns
could also be made available.
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