Abstract:
This research paper presents a novel and generalizable
approach for precisely detecting and identifying the configuration
of pieces on both 2D and 3D chessboard images with
different chess sets and varying background contexts. It makes
a significant milestone in the digitalization of the chess world
by enabling the recreation of physical chess boards on computer
screens using a single image. It also provides a framework for
real-time tracking and visualization of live chess games using
video frames obtained directly from the camera. The novelty lies
in the methodology that achieves remarkable accuracy through
four key steps: (1) identifying the corner points of the chessboard,
(2) detecting the chess pieces, (3) localizing the pieces within the
chessboard, and (4) evaluating the position with the best possible
variations. The introduction of the Fisher Linear Discriminant
Analysis-based dynamic thresholding technique contributes to the
perfect 100% accuracy in distinguishing between the white and
black chess pieces. The entire algorithm undergoes a thorough
experimentation and evaluation process, confirming the effectiveness
and versatility of the proposed approach.
Citation:
P. Ranasinghe, P. Ranasinghe and V. Ashan, "ChessEye: An Integrated Framework for Accurate and Efficient Chessboard Reconstruction," 2023 Moratuwa Engineering Research Conference (MERCon), Moratuwa, Sri Lanka, 2023, pp. 177-182, doi: 10.1109/MERCon60487.2023.10355515.