# Logo recognition - how to improve performance

I am working on a project of recognizing TV Channels. I am taking photos of the channels suck that i try to avoid the background and to take the sample from the center of the logo. I recognize 4 different logos, here are the templates:

How does my template matching algorithm work:
Given 4 templates of size 100x100, each representing a different TV Channel, each having a different threshold (of probability). The user is capturing the logo from the TV set, and then the algorithm is: - Run 4 independent template matching on each template to receive the probability for each template to match the captured image. - for every channel probability, if the probability of a channel is lower then the threshold of the channel, the the probability is changed into 0; - announce the recognized logo to be the one with highest probability. If all probabilities are 0, announce "no recognition".

For example, if i got one channel with probability of 0.85 and threshold of 0.9, and the second channel with probability of 0.8 and threshold of 0.75, then the second channel "wins".

When i take a photo of one of the logos, 95% of the times it recognizes the photos.

Current results:

• When trying to detect the first ("smiling face" logo), out of 10 detections i got 10 correct detections. For the template matching between the correct template and the image i get probabilities between 0.91 to 0.94. For the other logos i get probabilities between 0.77 to 0.91.
• When trying to detect the second ("green" logo), out of 10 detections i got 10 correct detections. For the template matching between the correct template and the image i get probabilities between 0.78 to 0.91. For the other logos i get probabilities between 0.71 to 0.83 (but because of high threshold, the detection succeeds).
• When trying to detect the third ("round" logo), out of 10 detections i got 9 correct detections. For the template matching between the correct template and the image i get probabilities between 0.83 to 0.92. For the other logos i get probabilities between 0.73 to 0.91.
• When trying to detect the fourth ("black and white" logo), out of 10 detections i got 10 correct detections. For the template matching between the correct template and the image i get probabilities between 0.91 to 0.94. For the other logos i get probabilities between 0.78 to 0.92.
• When trying to detect a "negative" image, many times i get a logo detection (which is bad). If i take, for example, an image of a complete white sheet, it detects the first, third and fourth logos with probability of over 0.9

How can i improve my algorithm, or change it, to get better results on "Negative" images?

Thanks for helping,

Eyal

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How exactly does your template matching work at the moment? –  TomP89 Mar 16 '12 at 11:13
Please take a look at the edit - i have added the decision algorithm and the results of a test that i made. –  Eyal Mar 16 '12 at 13:23
@Eyal, it seems your template matching algorithm is just not good enough. White sheet is not similar to your logos. –  Roman Shapovalov Mar 16 '12 at 14:17
I use openCV's algorithm, i only used the thresholds and found the maximal value –  Eyal Mar 16 '12 at 14:24
If you are using OpenCV, have you tried another recognition method such as EigenVecors (PCA) ? –  TomP89 Mar 16 '12 at 16:02