Figure 10: Image of a road sign and detection of its post
foot.
5 CONCLUSIONS AND FUTURE
WORKS
Up to now, the developed software is a prototype
version showing that it is possible to extract useful
informations from the video sequences. But in fu-
ture works we will have to solve several problems in-
volved by scene shading or weather. The scene light-
ning is also preponderant and it depends on many fac-
tors such as hour of the day or season.
Nevertheless, the presented works show that algo-
rithms have been successfully set up. Experimental
results are encouraging and computation time are low
enough not to prevent from real-time processing.
Furthermore we will have to deal with more com-
plex scenes including for example more than a sin-
gle sign. Concerning the road width, we also have
to improve our algorithm so that it will be able to
process images even if the road lane is not fully
bounded. That requires the detection of non-homo-
geneous road borders in terms of color, especially in
countryside scenes.
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