CVLGApr 30, 2021

Determining Chess Game State From an Image

arXiv:2104.14963v224 citations
Originality Highly original
AI Analysis

This solves the problem of automatic chess game analysis for amateur players, enabling improvement without manual input, and is incremental with novel dataset and method enhancements.

The paper tackles the problem of identifying chess piece configurations from images by introducing a new dataset and an end-to-end recognition system, achieving an error rate of 0.23% per square, which is 28 times better than the state of the art, and adapting to unseen chess sets with 99.83% accuracy using few-shot learning.

Identifying the configuration of chess pieces from an image of a chessboard is a problem in computer vision that has not yet been solved accurately. However, it is important for helping amateur chess players improve their games by facilitating automatic computer analysis without the overhead of manually entering the pieces. Current approaches are limited by the lack of large datasets and are not designed to adapt to unseen chess sets. This paper puts forth a new dataset synthesised from a 3D model that is an order of magnitude larger than existing ones. Trained on this dataset, a novel end-to-end chess recognition system is presented that combines traditional computer vision techniques with deep learning. It localises the chessboard using a RANSAC-based algorithm that computes a projective transformation of the board onto a regular grid. Using two convolutional neural networks, it then predicts an occupancy mask for the squares in the warped image and finally classifies the pieces. The described system achieves an error rate of 0.23% per square on the test set, 28 times better than the current state of the art. Further, a few-shot transfer learning approach is developed that is able to adapt the inference system to a previously unseen chess set using just two photos of the starting position, obtaining a per-square accuracy of 99.83% on images of that new chess set. The code, dataset, and trained models are made available online.

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