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Chessboard and Chess Piece Recognition With the Support of Neural Networks

机译:棋盘和国际象棋识别与神经网络的支持

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摘要

Chessboard and chess piece recognition is a computer vision problem that has not yet been efficiently solved. Digitization of a chess game state from a picture of a chessboard is a task typically performed by humans or with the aid of specialized chessboards and pieces. However, those solutions are neither easy nor convenient. To solve this problem, we propose a novel algorithm for digitizing chessboard configurations.We designed a method of chessboard recognition and pieces detection that is resistant to lighting conditions and the angle at which images are captured, and works correctly with numerous chessboard styles. Detecting the board and recognizing chess pieces are crucial steps of board state digitization.The algorithm achieves 95% accuracy (compared to 60% for the best alternative) for positioning the chessboard in an image, and almost 95% for chess pieces recognition. Furthermore, the sub-process of detecting straight lines and finding lattice points performs extraordinarily well, achieving over 99:5% accuracy (compared to the 74% for the best alternative).
机译:棋盘和国际象棋识别是一种尚未有效解决的计算机视觉问题。从棋盘的图片的国际象棋游戏状态的数字化是通常由人类或借助专门的棋盘和碎片进行的任务。然而,这些解决方案既不容易也不方便。为了解决这个问题,我们提出了一种用于数字化棋盘配置的新型算法。我们设计了一种棋盘识别和碎片检测的方法,该方法是抵抗照明条件的,并且用众多棋盘方式正确地工作。检测电路板并识别棋子是电路板状态数字化的关键步骤。算法可实现95%的精度(相比最佳替代方案的60%),用于将棋盘定位在图像中,并且近95%的棋子识别。此外,检测直线和查找格点的子过程非常好,精度超过99:5%(与最佳替代方案的74%相比)。

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