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I investigating if there is a not to complicated project to have a camera mounted above a bridge table and identify played cards from the feed. A lot of bridge tournaments are broadcasted on-line but it demands a person to sit with a laptop and click ever card being played and is a tedious job :)

There are 4 players and my thought was to have a marked area for card to be played in before registered.

Bridge Playing

A few things I'm thinking of.

By using a marked for played card OCR has only have to be made in few occasions but can I reach a 100% success rate? Will I need some uber machine to handle the OCR calculations and is there fast enough routines for what I want done?

Would be nice to hear your input, suggestions and if you have any experience and ideas!

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2 Answers 2

up vote 3 down vote accepted

You may use an Image Correlation. It's fast and precise enough.

Example in Mathematica identifying the suit (the same can be done for the value):

enter image description here

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You can also do correlation of the entire card if you would like - given it is a tournament deck you could know what they are like ahead of time. In addition placement of the camera to give a consistent view and minimize distortion would be helpful. Perhaps looking down from above the table. –  denver May 7 '13 at 4:16

Will something like this work? https://vimeo.com/3563858

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Nice video but how will that possible help me then? –  StefanE May 7 '13 at 7:06
    
Essentially, there are three problems you have to solve: calibration, segmentation, and classification. <br/> For calibration you'll store a background image and calculate & store the perspective transformation matrix (opencv). <br/> For segmentation, you will need to do: 1. subtract current image from background that you stored during calibration, 2. locate corners with rank/suit, 3. normalize this corner using the perspective distortion matrix. <br/> 1. feed normalized corners to a "trained" neural network classifier. <br/> You'll find most of what you need from OpenCV. good luck. –  Loozie May 7 '13 at 17:42

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