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This is an archived project. Repository and other project resources are read-only.
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Taddeüs Kroes
licenseplates
Commits
b23d56af
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b23d56af
authored
13 years ago
by
Jayke Meijer
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docs/report.tex
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b23d56af
...
...
@@ -45,10 +45,8 @@ in classifying characters on a license plate.
In short our program must be able to do the following:
\begin{enumerate}
\item
Use a perspective transformation to obtain an upfront view of license
plate.
\item
Reduce noise where possible to ensure maximum readability.
\item
Extracting characters using the location points in the xml file.
\item
Reduce noise where possible to ensure maximum readability.
\item
Transforming a character to a normal form.
\item
Creating a local binary pattern histogram vector.
\item
Matching the found vector with a learning set.
...
...
@@ -60,7 +58,7 @@ In short our program must be able to do the following:
The actual purpose of this project is to check if LBP is capable of recognizing
license plate characters. We knew the LBP implementation would be pretty
simple. Thus an advantage had to be its speed compared with other license plate
recognition implementations, but the uncertain
i
ty of whether we could get some
recognition implementations, but the uncertainty of whether we could get some
results made us pick Python. We felt Python would not restrict us as much in
assigning tasks to each member of the group. In addition, when using the
correct modules to handle images, Python can be decent in speed.
...
...
@@ -70,48 +68,46 @@ correct modules to handle images, Python can be decent in speed.
Now we know what our program has to be capable of, we can start with the
implementations.
\subsection
{
Extracting a letter
}
Rewrite this section once we have implemented this properly.
%NO LONGER VALID!
%Because we are already given the locations of the characters, we only need to
%transform those locations using the same perspective transformation used to
%create a front facing license plate. The next step is to transform the
%characters to a normalized manner. The size of the letter W is used as a
%standard to normalize the width of all the characters, because W is the widest
%character of the alphabet. We plan to also normalize the height of characters,
%the best manner for this is still to be determined.
%\begin{enumerate}
% \item Crop the image in such a way that the character precisely fits the
% image.
% \item Scale the image to a standard height.
% \item Extend the image on either the left or right side to a certain width.
%\end{enumerate}
%The resulting image will always have the same size, the character contained
%will always be of the same height, and the character will always be positioned
%at either the left of right side of the image.
\subsection
{
Transformation
}
A simple perspective transformation will be sufficient to transform and resize
the
plate
to a normalized format. The corner positions of
license pla
tes in the
the
characters
to a normalized format. The corner positions of
charac
te
r
s in the
dataset are supplied together with the dataset.
\subsection
{
Extracting a letter
}
NO LONGER VALID!
Because we are already given the locations of the characters, we only need to
transform those locations using the same perspective transformation used to
create a front facing license plate. The next step is to transform the
characters to a normalized manner. The size of the letter W is used as a
standard to normalize the width of all the characters, because W is the widest
character of the alphabet. We plan to also normalize the height of characters,
the best manner for this is still to be determined.
\begin{enumerate}
\item
Crop the image in such a way that the character precisely fits the
image.
\item
Scale the image to a standard height.
\item
Extend the image on either the left or right side to a certain width.
\end{enumerate}
The resulting image will always have the same size, the character contained
will always be of the same height, and the character will alway be positioned
at either the left of right side of the image.
\subsection
{
Reducing noise
}
Small amounts of noise will probably be suppressed by usage of a Gaussian
filter. A real problem occurs in very dirty license plates, where branches and
dirt over a letter could radically change the local binary pattern. A question
we can ask ourselves here, is whether we want to concentrate ourselves on these
exceptional cases. By law, license plates have to be readable. Therefore, we
will first direct our attention at getting a higher score in the 'regular' test
set before addressing these cases. Considered the fact that the LBP algorithm
divides a letter into a lot of cells, there is a good change that a great
number of cells will still match the learning set, and thus still return the
correct character as a best match. Therefore, we expect the algorithm to be
very robust when dealing with noisy images.
exceptional cases. By law, license plates have to be readable. However, the
provided dataset showed that this does not means they always are. We will have
to see how the algorithm performs on these plates, however we have good hopes
that our method will get a good score on dirty plates, as long as a big enough
part of the license plate remains readable.
\subsection
{
Local binary patterns
}
Once we have separate digits and characters, we intent to use Local Binary
...
...
@@ -128,9 +124,9 @@ form where the pattern is circular.
\begin{itemize}
\item
Determine the size of the square where the local patterns are being
registered. For explanation purposes let the square be 3 x 3.
\\
\item
The grayscale value of the middle pixel is used a threshold. Every
value
of the pixel around the middle pixel is evaluated. If it's value is
greater
than the threshold it will be become a one else a zero.
\item
The grayscale value of the middle pixel is used a
s
threshold. Every
value
of the pixel around the middle pixel is evaluated. If it's value is
greater
than the threshold it will be become a one else a zero.
\begin{figure}
[h!]
\center
...
...
@@ -175,27 +171,25 @@ order. Starting with dividing the pattern in to cells of size 16.
result is a feature vector of the image.
\item
Feed these vectors to a support vector machine. This will ''learn'' which
vector indicate what letter.
vector
s
indicate what letter.
\end{itemize}
To our knowledge, LBP has yet not been used in this manner before. Therefore,
it will be the first thing to implement, to see if it lives up to the
expectations. When the proof of concept is there, it can be used in
the
final
expectations. When the proof of concept is there, it can be used in
a
final
program.
Important to note is that due to the normalization of characters before
applying LBP. Therefore, no further normalization is needed on the histograms.
Given the LBP of a character, a Support Vector Machine can be used to classify
the character to a character in a learning set. The SVM uses
Later we will show that taking a histogram over the entire image (basically
working with just one cell) gives us the best results.
\subsection
{
Matching the database
}
Given the LBP of a character, a Support Vector Machine can be used to classify
the character to a character in a learning set. The SVM uses the collection of
histograms of an image as a feature vector. The SVM can be trained with a
subsection of the given dataset called the ''Learning set''. Once trained, the
the character to a character in a learning set. The SVM uses a concatenation
of each cell in an image as a feature vector (in the case we check the entire
image no concatenation has to be done of course. The SVM can be trained with a
subset of the given dataset called the ''Learning set''. Once trained, the
entire classifier can be saved as a Pickle object
\footnote
{
See
\url
{
http://docs.python.org/library/pickle.html
}}
for later usage.
...
...
@@ -204,11 +198,11 @@ entire classifier can be saved as a Pickle object\footnote{See
In this section we will describe our implementations in more detail, explaining
choices we made.
\subsection
{
Licensepla
te retrieval
}
\subsection
{
Charac
te
r
retrieval
}
In order to retrieve the
license plate
from the entire image, we need to
In order to retrieve the
characters
from the entire image, we need to
perform a perspective transformation. However, to do this, we need to know the
coordinates of the four corners of
the licensepla
te. For our dataset, this is
coordinates of the four corners of
each charac
te
r
. For our dataset, this is
stored in XML files. So, the first step is to read these XML files.
\paragraph*
{
XML reader
}
...
...
@@ -246,9 +240,9 @@ NormalizedImage. When these actions have been completed for each character the
license plate is usable in the rest of the code.
\paragraph*
{
Perspective transformation
}
Once we retrieved the cornerpoints of the
license pla
te, we feed those to a
module that extracts the (warped)
license pla
te from the original image, and
creates a new image where the
license pla
te is cut out, and is transformed to a
Once we retrieved the cornerpoints of the
charac
te
r
, we feed those to a
module that extracts the (warped)
charac
te
r
from the original image, and
creates a new image where the
charac
te
r
is cut out, and is transformed to a
rectangle.
\subsection
{
Noise reduction
}
...
...
@@ -276,13 +270,6 @@ the dirt, and the fact that the characters are very black, the shape of the
characters will still be conserved in the LBP, even if there is dirt
surrounding the character.
\subsection
{
Character retrieval
}
The retrieval of the character is done the same as the retrieval of the license
plate, by using a perspective transformation. The location of the characters on
the license plate is also available in de XML file, so this is parsed from that
as well.
\subsection
{
Creating Local Binary Patterns and feature vector
}
...
...
@@ -317,9 +304,7 @@ value, and what value we decided on.
The first parameter to decide on, is the
$
\sigma
$
used in the Gaussian blur. To
find this parameter, we tested a few values, by checking visually what value
removed most noise out of the image, while keeping the edges sharp enough to
work with. By checking in the neighbourhood of the value that performed best,
we where able to 'zoom in' on what we thought was the best value. It turned out
that this was
$
\sigma
=
?
$
.
work with. It turned out the best value is
$
\sigma
=
0
.
5
$
.
\subsection
{
Parameter
\emph
{
cell size
}}
...
...
@@ -332,8 +317,9 @@ be enough cells to properly describe the different areas of the character, and
the feature vectors will not have enough elements.
\\
\\
In order to find this parameter, we used a trial-and-error technique on a few
basic cell sizes, being ?, 16, ?. We found that the best result was reached by
using ??.
cell sizes. During this testing, we discovered that a lot better score was
reached when we take the histogram over the entire image, so with a single
cell. therefor, we decided to work without cells.
\subsection
{
Parameters
$
\gamma
$
\&
$
c
$}
...
...
@@ -354,7 +340,8 @@ checks for each combination of values what the score is. The combination with
the highest score is then used as our parameters, and the entire SVM will be
trained using those parameters.
\\
\\
We found that the best values for these parameters are
$
c
=
?
$
and
$
\gamma
=
?
$
.
We found that the best values for these parameters are
$
c
=
?
$
and
$
\gamma
=
?
$
.
\section
{
Results
}
...
...
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