n
tA A lA P rci at
i
HÀ | Ps
E A A OR te Dome ms mem tene
vem n V T A f
(b)
Figure 6. (a) (b) — first derivative of vertical intensity
projection for left and right orthophoto; (c) —
correlation between projections
Performing the shift of “feature” images to correlation peak we
calculate vertical projection of equal edge pixels by
implementing pixel-by-pixel comparison (Figure 7).
Left image
Right image > | i |
. \
Vertical
projection
ul
Figure 7. Counting of equal edge pixels
Straight-line edges correspond to local peaks on vertical
projection and can be found by implementing statistical analysis
of the projection form, which provides more reliable detection
results compared to the technique based on adaptive
thresholding. Two statistical hypotheses are tested: Ho —
projection form is a straight-line (no signal); H; — projection
form is a “A”-shaped peak.
The closeness of projection form to the hypothesis H, is
evaluated as a likelihood ratio (8).
260.) ®
o(H,)
where o(H,)» o(H,) denote standard deviation of
projection values for Ho, H, hypotheses respectively.
Straight-line edges with K value exceeding the experimental
threshold and locating inside the road lane represent the
obstacle cluster. Such cluster provides description of the
obstacle: distance, width, position in a road lane and height
above the road. Kalman filtering of the detected cluster gives
relative obstacle speed. The final decision about obstacle
presence is made after the special procedure of separate
lineament edges analysis.
5. RESULTS
This section shows examples of obstacle detection based on the
developed method. Figure 8 represents left images of real road
scenes. Detected obstacle is indicated as a white rectangle. At
the right of the rectangle two obstacle parameters are shown -
distance to the obstacle and obstacle width in meters.
Figure 8. Examples of obstacle detection
6. CONCLUSION
The developed method was tested on extensive database of real
road scenes and provided reliable obstacle detection in different
conditions including poor weather and night time.
In case of using standard video cameras with the basis of stereo
system about Im the method allows to detect obstacles with
height of 10cm on distance up to 50m (Zheltov, Sybiryakov,
2000). The working distance range of the method is from 15m
to 80m where several obstacles are visible in both cameras.
Implementation of the method for car collision avoidance
system operates with frequency of 10 frames per second.
Further development of the method is connected with
introducing the global matching based on dynamic
programming technique for detection of obstacle clusters of
similar structure. This approach is seen quite perspective in
sense of increasing the quality of periodical structures detection.
7. REFERENCES
Bertozzi M. and Broggi A., 1997, Vision-based vehicle
guidance, IEEE Computer, vol.30, pp.49-55, July 1997
Zheltov S., Sybiryakov A., 2000, Method of 3D-object
detection based on orthophoto difference analysis. IAPRS,
Vol.XXXIII, Part B3, Amsterdam 2000.
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