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Adversarial Generative Grammars for Human Activity Prediction

机译:人类活动预测的对抗生成语法

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In this paper we propose an adversarial generative grammar model for future prediction. The objective is to learn a model that explicitly captures temporal dependencies, providing a capability to forecast multiple, distinct future activities. Our adversarial grammar is designed so that it can learn stochastic production rules from the data distribution, jointly with its latent non-terminal representations. Being able to select multiple production rules during inference leads to different predicted outcomes, thus efficiently modeling many plausible futures. The adversarial generative grammar is evaluated on the Charades, Mul-tiTHUMOS, Human3.6M, and 50 Salads datasets and on two activity prediction tasks: future 3D human pose prediction and future activity prediction. The proposed adversarial grammar outperforms the state-of-the-art approaches, being able to predict much more accurately and further in the future, than prior work. Code will be open sourced.
机译:在本文中,我们提出了对未来预测的对抗生成语法模型。目标是学习一个模型,明确地捕获时间依赖项,提供预测多个,不同的未来活动的能力。我们的对策语法被设计成使其可以从数据分布中学习随着潜在的非终端陈述的数据分布中的随机生产规则。能够在推理期间选择多个生产规则导致不同的预测结果,从而有效地建模许多合理的期货。对抗性生成语法是在Chatrades,Mul-Tithumos,Humanet 3.6m和50个沙拉数据集和两个活动预测任务上进行评估:未来3D人类姿势预测和未来的活动预测。拟议的对抗法语法优于最先进的方法,能够在未来更准确,更进一步地预测,而不是事先工作。代码将是开放的。

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