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Real-time CNN-based Segmentation Architecture for Ball Detection in a Single View Setup

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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

TaskDatasetResultRank
Ball DetectionBall Tracking Dataset Front Labeling Convention (test)
F1 Score85.09
9
Ball DetectionProposed Ball Tracking Dataset Mid. Labeling Convention (test)
F189.01
9
Small Ball Detection and TrackingTennis
F1 Score71.7
8
Small Ball Detection and TrackingBadminton
F1 Score0.799
8
Small Ball Detection and TrackingBasketball
F1 Score16.8
8
Small Ball Detection and TrackingSoccer
F1 Score36.1
8
Small Ball Detection and TrackingVolleyball
F1 Score19.5
8
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