# What are good algorithms for vehicle license plate detection?

### Background

For my final project at university, I'm developing a vehicle license plate detection application. I consider myself an intermediate programmer, however my mathematics knowledge lacks anything above secondary school, which makes producing the right formulas harder than it probably should be.

I've spend a good amount of time looking up academic papers such as:

When it comes to the math, I'm lost. Due to this testing various graphic images proved productive, for example:

to

However this approach only worked to that particular image, and if the techniques were applied to different images, I'm sure a poorer conversion would occur. I've read about a formula called the `bottom hat morphology transform`, which does the following:

Basically, the trans- formation keeps all the dark details of the picture, and eliminates everything else (including bigger dark regions and light regions).

I can't find much information on this, however the image within the documentation near the end of the report shows its effectiveness.

### Other constraints

• Developing in C#
• Confining the project to UK registration plates only
• I can choose the images to convert as a demonstration

# Question

I need advice on what transformation techniques I should focus on developing, and what algorithms can help me.

EDIT: New information present on Continued - Vehicle License Plate Detection

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OpenCv is great place to start/extend. I've found Emgu in C# to be very good port of OpenCV. emgu.com/wiki/index.php/License_Plate_Recognition_in_CSharp –  kenny Jan 16 '11 at 19:54

There are a number of approaches you can take but the first strategy that pops into mind is to:

• Discovery/research: Identify the set of colors and fonts that you may need to identify. If your sample picture is representative of most British plates then your job is made easier. E.g. Simple, singular font and black lettering on a white background
• Code: Attempt to identify a rectangular region of an image where the colors are predominantly white and black. This is not a terribly math-heavy problem and it should give you the license plate region to concentrate on.
• Code: Do some clean up on your subregion such conversion to pure black and white (monochrome) and perhaps scaling/shifting into a nice, tight rectangle.
• Use API: Next employ an existing OCR (optical character recognition) algorithm on your sub-selected image region so see if you can read the text.

Like I said, this is one strategy of many but it comes to mind as one requiring the least amount of heavy math... that is if you can find an OCR implementation that will work for you.

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Thanks for the breakdown, think I'll focus on something similar to your description, detecting a shape which resembles a rectangle containing pixels of a certain colour, or colour bracket. –  Ash Jan 16 '11 at 20:11

You can take a look at one of emgucv example that show you a real world working examples of vehicle plate detection using OCR

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I did a similar project a few years ago in Java, first I applied the Sobel operator and then masked all the image with an image of a plate (with the Sobel operator applied too). The region of maximum coincidence is where the plate is. Then apply an OCR to the selected region to get the number.

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Thanks for the reply, I actually saw something about the Sobel operator in a paper I lost. I'll look into it :) –  Ash Jan 16 '11 at 20:12
Actually your idea is great! Only just occurred to me heh. Any idea on available pseudo code to describe the Sobel operator? –  Ash Jan 16 '11 at 22:00

This is clearly a computer vision type of problem. Take a look at OpenCV. It's in C++, but probably you'll be able to interface with it somehow.

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Yeah I actually downloaded OpenCV, but when I saw the sheer size of the library I decided it would be better if I tackle the problem myself, always a great backup though! –  Ash Jan 16 '11 at 20:13

UK already has a system that does that. I recall seeing a TV show in which they demonstrated they can find a car within London within 10 minutes (assuming they know the number and the car is driving around) Just reading Wikipedia gives you the pointers you need to start thinking about the issue: http://en.wikipedia.org/wiki/Automatic_number_plate_recognition

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The images describing different effects were really helpful. Gaussian Blur > Grayscale > Constrast + 60 worked great on all images, just need to work on detection algorithm :) –  Ash Jan 16 '11 at 22:25

It tells you exactly how to compute the bottom hat transform(sort of looks like an inverted graduated threshold transform to me).

First thing to do is implement the two morphology functions dilation and erosion.

To do this you need your f and b then you compute the function over a small region of the image at a point keeping the largest value found.

``````(f ⊕ b)(s, t) = max{f (s − x, t − y) + b(x, y)
|(s − x), (t − y) ∈ Df ; (x, y)∈Db}
``````

What this says is, take the maximum of the expression over all points in the domain region(such as a small rectangle centered at your point (s,t).

simple pseudo code would be

``````max = -infinity // for the point (s,t) on the image, must compute this for all points
for(x = -5 to 5)
for(y = -5 to 5)
max = Max(max, f(s - x, t - y) + b(x,y))
``````

effectively we now have a new image of the max values.

It's actually quite simple so don't make it harder than it is(we are simply adding b(x,y) to each point in the region and finding out which one gives the maximum value).

you do the same for the erosion(very similar to above)

Now the opening and closing is the composition of the two

You can think of it first as performing a dilation and then an erosion for an opening.

It says finally subtract the closing from the original image and you should have your transform.

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Thanks for the pesudo code, definitely makes things clearer. –  Ash Jan 16 '11 at 20:14