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Implementation of Trump Card Detection and Identification using Template Matching  

Lee, Yong-Hwan (Dept. of Electronics and Electrical Engineering, Dankook University)
Kim, Youngseop (Dept. of Digital Contents, Wonkwang University)
Publication Information
Journal of the Semiconductor & Display Technology / v.19, no.4, 2020 , pp. 112-115 More about this Journal
Abstract
Trump cards are used in variable games in households such as poker and blackjack. In many cases, it is able to be helpful to algorithmically identify the playing cards from camera views. In this paper, we provide an approach that detects and identifies the playing card using template matching scheme, and evaluate the results of the provided implementation. For ideal cases, the implemented system provides a 100% success rate for card identification correct. However, non-ideal case of perspective distortion is estimated with 70% success ratio. This work aims to evaluate the effectiveness of augmented reality user interface for an entertainment application like playing card games.
Keywords
Playing Card Game; Card Detection; Card Identification; Template Matching; Object Detection;
Citations & Related Records
Times Cited By KSCI : 5  (Citation Analysis)
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