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Figure 4. Result by spatio-temporal clustering method
Figure 4 shows a part of the result by the proposed method. In
this image the velocities of vehicles are about from 0 kim/h to
50 km/h. Recognized vehicles are circumscribed by rectangles.
Only on the road is set as area of interest. In this experiment all
vehicles in 77 vehicles, whose movements include direct
advances, left and right-hand turns, lane changes and stoppage,
could be recognized (recognition rate is 10094).
4.) Application to Different Spatial and Temporal
Resolution Image
The more spatial and temporal resolution is low, the more data
quantity decrease. Consequently, the load of observation and
telecommunication equipments is reduced. Therefore, it is
important to grasp spatial and temporal resolution influence for
vehicle manoeuvres recognition. We also applied the proposed
method to different spatial and temporal resolution images as
follows:
spatial resolution: — 10, 20, 30, 40, 50, 60, 70 (cm);
temporal resolution: 1/30, 1/10, 1/5, 1/2, 1 (seconds).
Here, temporal resolution means a time interval of successive
image. The data of the image is same as the previous
experiment.
Figure 5 depicts the vehicle recognition rates with various
resolutions images. The proposed method was more sensitive
to temporal resolution than to spatial resolution. In the case of
under 40 cm or 1/5 seconds, over 80% of recognition rates
could be obtained. With probabilistic relaxation-based
approach, the sensitivity to temporal resolution could be
alleviated.
4.3 Evaluation of Vehicle Position Accuracy
In practice, vehicle position is employed as data for application
to traffic engineering and planning. Moreover, velocity or
acceleration calculated from the position is employed. Hence it
is very important to grasp of the vehicle position accuracy.
The vehicle position accuracy was evaluated thorough
comparison between results by the proposed method and
—565—
temporal resolution (s)
spatial resolution (cm)
Figure 5. Examination of various resolutions
x-coodinate (pixels)
400 . 300 2200 -100—
_ Fai Dm — - -100
% vehicle trajectories] 8
é 2 200 &
/ 5
| à
300 =
LH
| 400
-500
—s— proposed method
— manual
Figure 6. Examination of vehicle position accuracy