In: Wagner W., Székely, B. (eds.): ISPRS TC VII Symposium - 100 Years ISPRS, Vienna, Austria, July 5-7, 2010, IAPRS, Vol. XXXVIII, Part 7B
i
473
Time [seconds]
Figure 5: The diagram shows the amount of data which is pro
cessed by the Ortho Module but not by the Traffic Processor in
case of full traffic data extraction including all road categories
and urban core scenarios.
Campaign
BAUMA 1
BAUMA 2
Total
Bursts evaluated
29
19
48
True Positives
1002
724
1726
False Positives
75
47
122
False Negatives
36
23
59
Correctness
93%
94%
93%
Completeness
97%
97%
97%
Quality
90%
91%
91%
Table 3: Evaluation of vehicle tracking quality.
4 RESULTS AND ACCURACY
Quality of traffic data obtained from the processing chain was
evaluated on image sequences obtained on Cologne and ”BAUMA”
Munich campaigns. The Cologne image data were used for val
idating detection accuracy, whereas Munich data were used for
evaluating tracking. The data represent a mix of scenarios rang
ing from urban core and suburban roads to motorways. Due to
the higher complexity of the scenes, the quality of traffic data
extracted in metropolitan cores is somewhat lower than on mo
torways and suburban areas. This deposits in vehicle detection
notably. Therefore, the quality of vehicle detection is examined
while distinguishing between these different scenes. However,
each campaign contains a mix of both scenes, since German city
cores are typically limited to a diameter of a few kilometers, even
in German major cities. Therefore, a total quality containing both
scene types is listed as well, giving the typical quality of the de
tection to be expected in operational use. The evaluation of track
ing distinguishes between the two Munich ”BAUMA” campaigns,
since the weather and illumination conditions were better at the
flight on 22.04. The definitions for completeness, correctness and
quality are:
true positives
true positives-^ false positives
true positives
true positives+false negatives
true pos
true pos+false pos+false neg
with true positives being the number of vehicles detected, false
positives the number of non-vehicle detections, and false nega
tives the number of vehicles missed. In tracking evaluation true
positives is the number of vehicles tracked correctly, false posi
tives the number of mistracked vehicles, and false negatives the
number of vehicles detected, but not tracked (vehicles that are ob
Correctness =
Completeness =
Quality —
scured during image bursts and cannot be tracked are not counted
as false positives).
Table 2 shows the results of detection algorithm. With a value
of around 90 % correctness of vehicle detection is at high level in
total and in suburban and motorway situations. In urban cores the
correctness drops slightly to 87 %. The completeness with 93 %
in suburban and motorway scenes and 92% in total is at high
level again providing precise estimates of local traffic density for
traffic simulations or road level of service visualization. In urban
core regions it drops a little to a value of 90 %. This all results
in a total quality of 83 %. Table 3 presents the results of evalu
ating vehicle tracking algorithm. The underlying image database
represents a mix of urban core and suburban/motorway scenes.
Tracking performs well with a correctness of about 93 % and a
completeness of 97%. There is nearly no difference between
the results obtained from two flights at different dates indicating
that tracking algorithm might be robust against slight changes in
weather and illumination conditions.
The system accuracy is the product of detection and tracking
quality. In the present case it is about 75 %. This makes the
system accuracy competitive to that of ground based sensor net
works. The quality of a typical induction loop is better than 90 %
(e.g. Leonhardt, 2004) at time of production. During years of
continuous operation it decreases slowly. In a complete sensor
network of a metropolitan area there is a mix of new and older
sensors, and some of them have even failed completely. This
drops down the average quality or system accuracy of the sensor
network. In Munich, the system accuracy of the complete ground
based sensor network for traffic data acquisition is at a value of
80%, as stated by Munich integrated traffic management cen
ter. The quality of traffic data obtained by the presented remote
sensing system being competitive to that of road sensor networks
in connection with the good spacial resolution (including minor
roads) and the reliability in case of ground damage makes the sys
tem well suited for its operation during mass events and disasters.
5 CONCLUSIONS AND FUTURE WORK
The quality of traffic data obtained by the presented remote sens
ing system being competitive to that of road sensor networks
in connection with the good spacial resolution (including minor
roads) and the reliability in case of ground damage makes the
system well suited for its operation during mass events and disas
ters. In the evaluated case with a mixture of urban core, suburban
roads, and (local) motorways, the overall system accuracy is ap
proximately 75 %. This accuracy value is comparable to that of
typical metropolis ground based sensor networks with the advan
tage of the remote sensing system, that traffic data on all road cat
egories (including smallest minor roads) can be recorded. E.g. in
case of traffic congestion on main roads and motorways not only
the traffic density of the main road but also densities on alterna
tive routes (that are not covered by induction loops or stationary
traffic cameras) can be determined. However, the operating costs
of this prototype system are quite high which limits its applica
tion to temporally limited scenarios like mass events or disasters.
With the ongoing development of UAV or HALE unmanned air
crafts, further applicability of the system may occur in future.
The system is sufficient for real-time traffic data extraction from
aerial image time series on main roads, even in metropolitan core
scenarios. In case of full traffic data extraction including all
roads in urban core scenes with several thousands of vehicles
per scene, a slight lack of performance in the traffic data algo
rithms is present. In order to close this gap, two measures are
taken. Firstly, Adaboost classifier will be cascaded. Secondly,