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Does anyone know of recent academic work which has been done on logo recognition in images? Please answer only if you are familiar with this specific subject (I can search Google for "logo recognition" myself, thank you very much). Anyone who is knowledgeable in computer vision and has done work on object recognition is welcome to comment as well.

Update: Please refer to the algorithmic aspects (what approach you think is appropriate, papers in the field, whether it should work(and has been tested) for real world data, efficiency considerations) and not the technical sides (the programming language used or whether it was with OpenCV...) Work on image indexing and content based image retrieval can also help.

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If you would tell us what you're looking for and what you mean by "serious", your could improve the chances of getting a good answer. I've been working in the computer vision/object recognition area for 10+ years, but I'm not even sure what you mean by "logo recognition". –  nikie Jan 18 '10 at 18:24
By logo recognition I mean for example getting an image containing the Coca Cola logo/trademark, detecting the logo and marking it as 'Coca Cola'. 10 years of work in the field sound serious to me.(I was mainly trying to avoid answers such as the one below which are not very informative) –  elijah Jan 18 '10 at 19:10
Did you find an alternative to treat your problem ? Because the problem is there are thousands of logos in the world so recognize logo is a bit difficult...I thought about BoW features but do we have class for each kind of logo ? –  lilouch Jul 16 '14 at 14:43

7 Answers 7

up vote 25 down vote accepted

You could try to use local features like SIFT here: http://en.wikipedia.org/wiki/Scale-invariant_feature_transform

It should work because logo shape is usually constant, so extracted features shall match well.

The workflow will be like this:

  1. Detect corners (e.g. Harris corner detector) - for Nike logo they are two sharp ends.

  2. Compute descriptors (like SIFT - 128D integer vector)

  3. On training stage remember them; on matching stage find nearest neighbours for every feature in the database obtained during training. Finally, you have a set of matches (some of them are probably wrong).

  4. Seed out wrong matches using RANSAC. Thus you'll get the matrix that describes transform from ideal logo image to one where you find the logo. Depending on the settings, you could allow different kinds of transforms (just translation; translation and rotation; affine transform).

Szeliski's book has a chapter (4.1) on local features. http://research.microsoft.com/en-us/um/people/szeliski/Book/


  1. I assumed you wanna find logos in photos, for example find all Pepsi billboards, so they could be distorted. If you need to find a TV channel logo on the screen (so that it is not rotated and scaled), you could do it easier (pattern matching or something).

  2. Conventional SIFT does not consider color information. Since logos usually have constant colors (though the exact color depends on lightning and camera) you might want to consider color information somehow.

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Thanks. This approach sounds reasonable. Regarding the nearest neighbor for every feature - that sounds pretty intensive (I'm planning on having thousands of logos to be recognized), what would you think is a good way of optimizing? I thought of vector quantization or approximate nearest neighbors... –  elijah Jan 19 '10 at 10:15
liza, you are right, it is hard to find the NN in 128D. The current state-of-the-art is approximate NN search via kd-tree or k-means tree forest. It is implemented in Muja-Lowe FLANN: people.cs.ubc.ca/~mariusm/index.php/FLANN/FLANN –  Roman Shapovalov Jan 19 '10 at 12:06
Thanks again. Also found these papers dealing with scalable and efficient image recognition: * "Small Codes and Large Image Databases for Recognition" by Torralba,Fergus,Weiss * "Scalable Recognition with a Vocabulary Tree" by Nister and Stewenius –  elijah Jan 19 '10 at 18:36
vlfeat.org has an implementation of SIFT for MATLAB and C (along with some other computer vision algorithms) –  yxk Apr 9 '10 at 20:35
@SuzanCioc First of all, you need a training set of logos. For example, you can have pictures where logos are annotated by bounding boxes. Then you can extract the descriptors, and label them as logo or non-logo depending on the region where you extracted them. Does this answer your question? –  Roman Shapovalov Jul 15 '13 at 11:54

We worked on logo detection/recognition in real-world images. We also created a dataset FlickrLogos-32 and made it publicly available, including data, ground truth and evaluation scripts.

In our work we treated logo recognition as retrieval problem to simplify multi-class recognition and to allow such systems to be easily scalable to many (e.g. thousands) logo classes.

Recently, we developed a bundling technique called Bundle min-Hashing that aggregates spatial configurations of multiple local features into highly distinctive feature bundles. The bundle representation is usable for both retrieval and recognition. See the following example heatmaps for logo detections:

enter image description here enter image description here

You will find more details on the internal operations, potential applications of the approach, experiments on its performance and of course also many references to related work in the papers [1][2].

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You find the papers here: multimedia-computing.de/wiki/Stefan_Romberg. Look for "Bundle min-Hashing" or my PhD thesis. I have some demos which are not public (yet). The prototype has been sold. –  Stefan Apr 30 '14 at 20:12

Take a look at the Unlogo project. It is open source, and works in the real world.

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Thanks for the link. Looks like a cool project. They seem to use SURF to match the logos. The source is here: github.com/jefftimesten/Unlogo. Check out logomunge. –  Øyvind Skaar Sep 7 '11 at 11:39
Source is dead. –  knedlsepp Feb 23 at 10:48

Worked on that: Trademark matching and retrieval in sports video databases get a PDF of the paper: http://scholar.google.it/scholar?cluster=9926471658203167449&hl=en&as_sdt=2000

We used SIFT as trademark and image descriptors, and a normalized threshold matching to compute the distance between models and images. In our latest work we have been able to greatly reduce computation using meta-models, created evaluating the relevance of the SOFT points that are present in different versions of the same trademark.

I'd say that in general working with videos is harder than working on photos due to the very bad visual quality of the TV standards currently used.


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I worked on a project where we had to do something very similar. At first I tried using Haar Training techniques using this software


It worked, but was not an optimal solution for our needs. Our source images (where we were looking for the logo) were a fixed size and only contained the logo. Because of this we were able to use cvMatchShapes with a known good match and compare the value returned to deem a good match.

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Please see my update –  elijah Jan 15 '10 at 23:04

Well, since you mentioned OpenCV... It can do template matching



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Its really a straightfoward problem. All you would need to do is feed a series of logos to a Neural Network and it should output a matching logo. (you just need various images of the logo you are interested in. )

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People seem to think neural networks are some kind of magic tools that can solve any problem. They're not. They can approximate smooth N-dimensional functions or decision boundaries. And recognizing if some logo is present somewhere in an image is not a smooth function. Not unless you do a lot of feature extraction first. –  nikie Mar 19 '12 at 9:21
right but you can use multiple neural nets or nodes to do that for you –  Adam Mar 21 '12 at 17:21
Let's take a simple example: you want to recognize the presence of a 1 pixel thick circle in the image, at any position or scale. You train your NN with sample images of a circle with center (200/200) and radii 100..200. Will it detect a circle with radius 99? No, because that circle has no pixel in common with any of the training pixels. Will it recognize a circle centered at 199/199? Again, no, because it shares few common pixels with any training sample. You would have to train every circle in every scale and position and you would need a corresponding number of neurons in hidden layers... –  nikie Mar 21 '12 at 17:46
So if your image is 1000x1000 pixels in size, you will need 10^9 training samples (and a similar number of hidden neurons) simply to detect a shifted circle. If you want to detect shapes that are not rotation symmetric, it gets even worse: To detect a square in any position, size and orientation you'd need (about) 10^11 sample images (1000x1000 center locations times 1000 different widths, times 100 different rotations). –  nikie Mar 21 '12 at 17:52
Imagine how many samples you would need to recognize a Coca Cola logo, anywhere in the image, at any rotation, affine or perspective transformation, with any background and in any color... –  nikie Mar 21 '12 at 18:01

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