Sophisticated trajectory prediction models that effectively mimic team dynamics have many potential uses for sports coaches, broadcasters and spectators. However, through experiments on soccer data we found that it can be surprisingly challenging to train a deep learning model for player trajectory prediction which outperforms linear extrapolation on average distance between predicted and true future trajectories. We propose and test a novel method for improving training by predicting a sparse trajectory and interpolating using constant acceleration, which improves performance for several models. This interpolation can also be used on models that aren't trained with sparse outputs, and we find that this consistently improves performance for all tested models. Additionally, we find that the accuracy of predicted trajectories for a subset of players can be improved by conditioning on the full trajectories of the other players, and that this is further improved when combined with sparse predictions. We also propose a novel architecture using graph networks and multi-head attention (GraN-MA) which achieves better performance than other tested state-of-the-art models on our dataset and is trivially adapted for both sparse trajectories and full-trajectory conditioned trajectory prediction.
翻译:有效模仿团队动态的精细轨迹预测模型对体育教练、广播员和观众有许多潜在用途。然而,通过足球数据实验,我们发现,为球员轨迹预测训练一个深层次学习模型,其效果优于预测和真实未来轨迹之间平均距离的线性外推法,可能具有惊人的挑战性。我们提出并试验一种创新方法,通过预测微小的轨迹和利用恒定加速的内插来改进培训,从而改善几个模型的性能。这种内插还可以用于没有经过微小产出培训的模型,我们发现这不断改善所有测试模型的性能。此外,我们发现通过调整其他球员的全轨迹和全轨迹预测,可以提高一组球员预测轨迹的准确性,而且如果结合稀疏的预测,这一点会进一步改进。我们还提议了一种使用图形网络和多头关注(GRAN-MA)的新结构,其性能优于我们数据集上其他经过测试的状态-艺术模型,并且不小小地适应了微轨迹和全轨迹预测。