Real-time CNN-based Segmentation Architecture for Ball Detection in a Single View Setup
About
This paper considers the task of detecting the ball from a single viewpoint in the challenging but common case where the ball interacts frequently with players while being poorly contrasted with respect to the background. We propose a novel approach by formulating the problem as a segmentation task solved by an efficient CNN architecture. To take advantage of the ball dynamics, the network is fed with a pair of consecutive images. Our inference model can run in real time without the delay induced by a temporal analysis. We also show that test-time data augmentation allows for a significant increase the detection accuracy. As an additional contribution, we publicly release the dataset on which this work is based.
Gabriel Van Zandycke, Christophe De Vleeschouwer• 2020
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Ball Detection | Ball Tracking Dataset Front Labeling Convention (test) | F1 Score85.09 | 9 | |
| Ball Detection | Proposed Ball Tracking Dataset Mid. Labeling Convention (test) | F189.01 | 9 | |
| Small Ball Detection and Tracking | Tennis | F1 Score71.7 | 8 | |
| Small Ball Detection and Tracking | Badminton | F1 Score0.799 | 8 | |
| Small Ball Detection and Tracking | Basketball | F1 Score16.8 | 8 | |
| Small Ball Detection and Tracking | Soccer | F1 Score36.1 | 8 | |
| Small Ball Detection and Tracking | Volleyball | F1 Score19.5 | 8 |
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