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@@ -547,11 +547,11 @@ According to Wikipedia \cite{wikiplate}, commercial license plate recognition
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that are currently on the market software score about $90\%$ to $94\%$, under
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that are currently on the market software score about $90\%$ to $94\%$, under
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optimal conditions and with modern equipment.
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optimal conditions and with modern equipment.
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-Our program scores an average of $94.0\%$. However, this is for a single
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+Our program scores an average of $94.3\%$. However, this is for a single
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character. That means that a full license plate should theoretically
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character. That means that a full license plate should theoretically
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-get a score of $0.940^6 = 0.690$, so $69.0\%$. That is not particularly
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+get a score of $0.943^6 = 0.703$, so $70.3\%$. That is not particularly
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good compared to the commercial ones. However, our focus was on getting
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good compared to the commercial ones. However, our focus was on getting
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-good scores per character. For us, $94\%$ is a very satisfying result.
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+good scores per character. For us, $94.3\%$ is a very satisfying result.
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\subsubsection*{Faulty classified characters}
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\subsubsection*{Faulty classified characters}
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