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@@ -480,9 +480,7 @@ classification and the accuracy. In this section we will show our findings.
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Of course, it is vital that the recognition of a license plate is correct,
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almost correct is not good enough here. Therefore, we have to get the highest
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accuracy score we possibly can.\\
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-\\ According to Wikipedia
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-\footnote{
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-\url{http://en.wikipedia.org/wiki/Automatic_number_plate_recognition}},
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+\\ According to Wikipedia \cite{wikiplate}
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commercial license plate recognition software score about $90\%$ to $94\%$,
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under optimal conditions and with modern equipment.\\
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\\
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@@ -601,6 +599,33 @@ to help out. Further communication usually went through e-mails and replies
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were instantaneous! A crew to remember.
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\section{Discussion}
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+We had some good results but of course there are more things to explore.
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+For instance we did a research on three different patterns. There are more patterns
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+to try. For instane we only tried (8,3)-, (8,5)- and (12,5). The interesting to
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+do is to test which pattern gives the best result. This is also done by grid-
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+searching, changing the size of circle and the amount of neighbours.
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+
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+One important feature of our framework is that the LBP class can be changed by
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+an other technique. This may be a different algorithm than LBP. Also the classifier
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+can be changed in an other classifier. By applying these kind of changes we can
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+find the best way to recognize licence plates.
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+
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+We don't do assumption when a letter is recognized. For instance dutch licence plates
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+exist of three blocks, two digits or two characters. Or for the new licence plates
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+there are three blocks, two digits followed by three characters, followed by one or
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+two digits. The assumption we can do is when there is have a case when one digit
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+is moste likely to follow by a second digit and not a character. Maybe these assumption
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+can help in future research to achieve a higher accuracy rate.
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+
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+
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+\appendix
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+\section{Faulty Classifications}
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+\begin{figure}[H]
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+\center
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+\includegraphics[scale=0.5]{faulty.png}
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+\caption{Faulty classifications of characters}
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+\end{figure}
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+\end{document}
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\begin{thebibliography}{9}
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@@ -617,12 +642,3 @@ were instantaneous! A crew to remember.
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Retrieved from http://en.wikipedia.org/wiki/Automatic\_number\_plate\_recognition
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\end{thebibliography}
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-
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-\appendix
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-\section{Faulty Classifications}
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-\begin{figure}[H]
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-\center
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-\includegraphics[scale=0.5]{faulty.png}
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-\caption{Faulty classifications of characters}
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-\end{figure}
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-\end{document}
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