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Temporally Precise Action Spotting in Soccer Videos Using Dense Detection Anchors

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We present a model for temporally precise action spotting in videos, which uses a dense set of detection anchors, predicting a detection confidence and corresponding fine-grained temporal displacement for each anchor. We experiment with two trunk architectures, both of which are able to incorporate large temporal contexts while preserving the smaller-scale features required for precise localization: a one-dimensional version of a u-net, and a Transformer encoder (TE). We also suggest best practices for training models of this kind, by applying Sharpness-Aware Minimization (SAM) and mixup data augmentation. We achieve a new state-of-the-art on SoccerNet-v2, the largest soccer video dataset of its kind, with marked improvements in temporal localization. Additionally, our ablations show: the importance of predicting the temporal displacements; the trade-offs between the u-net and TE trunks; and the benefits of training with SAM and mixup.

Jo\~ao V. B. Soares, Avijit Shah, Topojoy Biswas• 2022

Related benchmarks

TaskDatasetResultRank
Action spottingSoccerNet v2 (test)
Average-mAP (Tight 1-5 s)60.7
23
Action spottingSoccerNet v2 (challenge)
Average-mAP (Tight 1-5s)68.33
14
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