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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B2. Istanbul 2004
parking lot. The goal was to get information about as many
vehicle categories, as possible.
Categorizing Issues
The ground based laser scanning measurement was performed
in Hungary, where the traffic patterns are basically
representative for Europe, while in our research we used
airborne data sets acquired in the USA and Canada. where
characteristics of the traffic are noticeably different. From the
nineties, there are much more MPVs (especially light trucks)
sold in the US as passenger cars. In Europe, there are much less
MPVs running on the roads, and most of them are minivans, not
SUVs and light trucks, while in the passenger car category, the
proportion of hatchback cars is definitely higher, whereas the
proportion of the sedans is much higher in the US. Therefore,
we focused on vehicles that can be representative in both
regions.
Figure 5. The point clouds of the test vehicles
For our model-based investigations, we used the data set
acquired about a Ford Mondeo with a conventional sedan
profile, and about a VW Golf, which is a hatchback: two very
popular cars with very typical shapes (Figure 5).
PCA Test
First, these two typical vehicles were classified using PCA: the
cars have been categorized correctly. In the PCA, where 6
parameters were involved (length, width, heights), these cars
are on the border of two groups (passenger cars traveling along
and against flight direction): the cars from the airborne mapping
are either elongated or shortened, that is why the moving
directions can also be distinguished in the 6 parameter case.
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Figure 6. The new cars in the PCA-based clustering
In our ground based laser measurements the cars parked in a
parking lot, therefore, their length values in the dataset fall
between the shortened and elongated length values of the
airborne dataset (Figure 6).
Profile Determination
In order to derive the shape of vehicles. the sides have been
cropped, since the points reflected from the side of the vehicle
are not included in the profile determination. Just for the sake of
comparison, in the airborne campaign, typically 20-30 points
are reflected from an elongated car, in the ground based dataset
these test vehicles have about 200-300 000 points, despite the
side-looking sensor position (the back of the car is shadowed).
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Figure 8. Shapes of the airborne campaign
Figure 9. The combined shape curves and envelopes
As it can be seen in the Figures 7 to 9, the shapes of the cars
measured with the ground sensor are fit in the previously
defined buffer zone. The only difference is the back part of the
vehicles, where the hatchbacks are remarkable higher than the
sedans. The classification cannot be exclusively based on the
length, since it depends on the speed of the vehicle; therefore,
the shapes in the figures are normalized in length.