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Taddeüs Kroes
licenseplates
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0bba6a5d
Commit
0bba6a5d
authored
Dec 22, 2011
by
Taddeus Kroes
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Worked on Discusseion section in report.
parent
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0bba6a5d
...
...
@@ -549,19 +549,6 @@ expectations. \\
Note: Both tests were executed using an AMD Phenom II X4 955 CPU processor,
running at 3.2 GHz.
This is not spectacular considering the amount of calculating power this CPU
can offer, but it is still fairly reasonable. Of course, this program is
written in Python, and is therefore not nearly as optimized as would be
possible when written in a low-level language.
Another performance gain is by using one of the other two neighbourhoods.
Since these have 8 points instead of 12 points, this increases performance
drastically, but at the cost of accuracy. With the (8,5)-neighbourhood
we only need 81ms seconds to identify a character. However, the accuracy
drops to
$
89
\%
$
. When using the (8,3)-neighbourhood, the speedwise performance
remains the same, but accuracy drops even further, so that neighbourhood
is not advisable to use.
\section
{
Discussion
}
There are a few points open for improvement. These are the following.
...
...
@@ -580,44 +567,56 @@ The expectation is that using a larger diameter pattern, but with the same
amount of points is worth trying. The theory behind that is that when using a
gaussian blur to reduce noise, the edges are blurred as well. By
\subsection
{
Context Information
}
We don't do assumption when a letter is recognized. For instance Dutch licence
plates exist of three blocks, two digits or two characters. Or for the new
licence plates there are three blocks, two digits followed by three characters,
followed by one or two digits. The assumption we can do is when there is have a
case when one digit is most likely to follow by a second digit and not a
character. Maybe these assumption can help in future research to achieve a
higher accuracy rate.
\subsection
{
Speed up
}
A possibility to improve the performance speedwise would be to separate the
creation of the Gaussian kernel and the convolution. This way, the kernel can
be cached, which is a big improvement. At this moment, we calculate this kernel
every time a blur is applied to a character. This was done so we could use a
standard Python function, but we realised too late that there is performance
loss due to this.
Another performance loss was introduced by checking for each pixel if it is
in the image. This induces one function call and four conditional checks
per pixel, which costs performance. A faster method would be to first set a
border of black pixels around the image, so the inImage function is now done
implicitly because it simply finds a black pixel if it falls outside the
original image borders.
\subsection
{
Context information
}
Unlike existing commercial license plate recognition software, our
implementation makes no use of context information. For instance, Dutch early
license plates consist of three blocks, one of two digits and two of two
letters. More recent Dutch plates also consist of three blocks, two digits
followed by three characters, followed by one or two digits.
\\
This information could be used in an extension of our code to increase
accuracy.
\subsection
{
Potential speedup
}
One way of gaining time-wise performance is making a smart choice of local
binary pattern. For instance, the (8,3)-neighbourhood has a good performance,
but low accuracy. The (12,8)-neighbourhood yields a high accuracy, but has a
relatively poor performance. As an in-between solution, the (8,5)-neighbourhood
can be used. This has the same time-wise performance as (8,3), but a higher
accuracy. The challenge is to find a combination of (number of points,
neighbourhood size) that suits both accuracy and runtime demands.
Another possibility to improve the performance speed-wise would be to separate
the creation of the Gaussian kernel and the convolution. This way, the kernel
will not have to be created for each feature vector. This seems to be a trivial
optimization, but due to lack of time we have not been able to implement it.
Using Python profiling, we learned that a significant percentage of the
execution time is spent in the functions that create the LBP of a pixel. These
functions currently call the
\texttt
{
LocalBinaryPatternizer.is
\_
pixel
\_
darker
}
function for each comparison, which is expensive in terms of efficiency. The
functions also call
\texttt
{
inImage
}
, which (obviously) checks if a pixel is
inside the image. This can be avoided by adding a border around the image with
the width of half the neighbourhood size minus one (for example,
$
\frac
{
5
-
1
}{
2
}
=
2
$
pixels in a
$
5
x
5
$
neighbourhood). When creating the feature vector,
this border should not be iterated over.
\section
{
Conclusion
}
In the end it turns out that using Local Binary Patterns is a promising
technique for License Plate Recognition. It seems to be relatively indifferent
for the amount of dirt on license plates and different fonts on these plates.
It turns out that using Local Binary Patterns is a promising technique for
license plate recognition. It seems to be relatively indifferent of the amount
of dirt on license plates, which means that it is robust.
\\
Also, different fonts are recognized quite well, which means that it is well
suited for international use (at country borders, for example).
T
he performance speed wise is fairly good, when using a fast machine. However,
this is written in Python, which means it is not as efficient as it could b
e
when using a low-level languages
.
T
ime-wise performance turns out to be better than one would expect from a large
Python program. This gives high hopes for performance in any futur
e
implementation written in a C-like language
.
We believe that with further experimentation and development, LBP's can
absolutely be used as a good license plate recognition method.
Given both of the statements above, we believe that with further
experimentation and development, LBP's is absolutely a valid method to be used
in license plate recognition.
\section
{
Reflection
}
...
...
@@ -630,8 +629,8 @@ were and whether we were able to find a proper solution for them.
\subsubsection*
{
Dataset
}
We did experience a number of problems with the provided dataset. A number of
these are problems to be expected in
a real world problem, but which make
development
harder. Others are more elemental problems.
these are problems to be expected in
the real world, but which make development
harder. Others are more elemental problems.
The first problem was that the dataset contains a lot of license plates which
are problematic to read, due to excessive amounts of dirt on them. Of course,
...
...
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