Full text: Close-range imaging, long-range vision

  
  
manual. Centers of gravity of circumscribed rectangles were set 
as the vehicle positions. Figure 6 illustrates one of the 
comparisons of trajectories. The vehicle movement of this 
example is left-hand turn, and the difference between positions 
by the proposed method and manual is 2.6 pixels for this 
experiment. 
Position accuracy of 40 vehicles for 10 seconds was examined, 
and the average of the differences is 2.5 pixels (+0.9 pixels). 
Note that the sequential images of interest was only aligned not 
calibrated absolutely, so the absolute distance of the differences 
were not calculated. 
5. CONCLUSION 
The conclusions of this paper are as follows: 
(1) We evaluated possibility that existing methods may be 
applied; 
(2) We proposed spatio-temporal clustering method as a 
vehicle manoeuvres recognition technique; 
(3) We confirmed the effectiveness of the proposed method 
through 
(a) application to aerial HDTV images, 
(b) application to various different spatial and temporal 
resolution images, 
(c) evaluation of the vehicle position accuracy. 
The future prospects are 
(a) expansion of application; 
(b) absolute orientation to flood of image sequence; 
(c) improvement of accuracy of vehicle position; 
(d) observation by multiple high altitude platforms with video 
cameras 
(e) data fusion of various sensors such as beacons, GPS, fixed 
and high altitude video cameras, and so on. 
The use of this study has the potential to improve many 
Intelligent Transportation System strategies. 
ACKNOWLEDGEMENTS 
We gratefully acknowledge financial support by the Research 
Fellowships of the Japan Society for the Promotion of Science 
for Young Scientists (06958). 
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