of decision. It is also possible to make this approach
more robust by creating a unknown class for seeds at
equal distance from the various groups.
The testing on the identification algorithm on
seeds of other plants has to be made. System enhance-
ments have to be made like changing the infrared bar-
rier in order to extend seed varieties acquisition. The
design and the development of a new hardware sys-
tem have to be made in order to implement a three
camera systems.
ACKNOWLEDGEMENTS
This work was supported by the National Institut of
Agronomical Research (INRA), the variety and seed
study and control group (GEVES), the ESEO gradu-
ate school of engineering in electronic, and the LISA
laboratory of the University of Angers.
For their financial support the region Pays de Loire
and the CER Vegetal (French contract).
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