Figure 6: Example for matching stationary targets
and chart
tracking algorithm. Thus a correction of the position
and heading of the own ship according to equation
(2) is not needed.
Based on the distance vectors a validation step is
performed. All assignments with a distance larger
than a certain threshold are assumed erroneous and
the image measurements are discarded. Another
condition can be stated to avoid wrong associations.
A landmark of the chart can only be assigned to one
stationary object. If there is more than one validated
assignment, only the assignment with the smallest
distance is taken into account for matching purposes.
The distance vector is defined by the difference of po-
sitions of two assigned points and therefore contains
two dimensional displacement information. Thus the
weighting of the measurements must be different from
the algorithm described in section 4.1. In this case,
the inverse of the position covariance matrix of the
specific tracking filter can be used for weighting the
measurements. With the computed distance vectors
and the modified weighting matrices the corrections
are computed as discussed in section 4.1.
The result of matching stationary targets and elec-
tronic chart is the correction As¥ and the covariance
matrix Cs = [MT WM] ^! as a measure of the accu-
racy obtained by the matching process.
An example of this matching procedure is displayed
in figure 6. The radar image was recorded at a trial
70
with the push tow L16 (185m, 10000 t) at the river
Rhine near Nijmegen. The 'confirmed' radar targets
are marked by rectangles. The size of the rectangles
symbolizes the accuracy of the estimated position of
the target. Their velocity is indicated by a vector start-
ing in the middle of the rectangle. In the chart several
groynes are visible extending from the river banks
into the river. At the end of the groynes radar re-
flectors are installed. These reflectors are stored as
landmarks in the electronic chart. The radar reflec-
tors are also tracked as indicated by the rectangles.
Those targets marked with a cross are classified as
stationary and therefore used for matching with the
landmarks of the chart.
4.3 Matching laser scanner image and electronic
chart
Within the integrated navigation system a laser scan-
ner is used to sense the near surroundings of the
ship. The scanner is mounted at the bow of the ship
near the water surface and takes its measurements in
one horizontal plane. The sensor covers an azimuth
of 270 degrees and can detect objects in a distance
of up to 50 m with an accuracy of 4 cm (1 e). The
radar sensor has considerable disadvantages in de-
tecting the near surroundings of the ship. The least
detectable distance is about 15 m and the radial quan-
tization of the digitized radar image is 3 m. Thus laser
scanner measurements are essential for the naviga-
tion in narrow canals, for entering locks or for docking
manoevers.
Although the coverage and the accuracy of laser
scanner and radar are quite different, the images de-
rived from both sensors are similar, because both
sensors yield a map-like image of the surroundings.
Thus the same matching techniques as explained for
the radar in section 4.1 can be used for the laser
scanner image. The implementation of the match-
ing algorithm for laser scanner images is subject to
current work within this project.
Figure 7 shows an example of the laser scanner
image. This picture was recorded when entering a
lock chamber on the river Neckar. The black points
are the laser scanner measurements, the grey line is
the contour of the lock from the electronic chart.
5 TRACKING OBJECTS IN IMAGE SEQUENCES
Besides time invariant objects, e.g. river banks, the
navigation environment scanned by the radar sensor
also comprises foreign ships, anchored buoys and
radar reflectors. In order to obtain information about
the actual traffic situation, it is essential to reconstruct
the trajectories of the latter objects, with respect to
position, speed and orientation in relation to the own
ship [7]. A bank of dynamic object models has to
be processed in parallel, each model describing an
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