TL;DR
DeepDarts introduces a novel object-based keypoint detection method for automatic dart score prediction from single images, enabling low-cost, accessible scoring using standard smartphones.
Contribution
The paper presents a new object modeling approach for keypoint detection, tailored for closely positioned points, and demonstrates its effectiveness in automatic dart scoring from single images.
Findings
94.7% accuracy on primary dataset
84.0% accuracy on challenging dataset
Effective data augmentation strategies
Abstract
Existing multi-camera solutions for automatic scorekeeping in steel-tip darts are very expensive and thus inaccessible to most players. Motivated to develop a more accessible low-cost solution, we present a new approach to keypoint detection and apply it to predict dart scores from a single image taken from any camera angle. This problem involves detecting multiple keypoints that may be of the same class and positioned in close proximity to one another. The widely adopted framework for regressing keypoints using heatmaps is not well-suited for this task. To address this issue, we instead propose to model keypoints as objects. We develop a deep convolutional neural network around this idea and use it to predict dart locations and dartboard calibration points within an overall pipeline for automatic dart scoring, which we call DeepDarts. Additionally, we propose several task-specific data…
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