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Visual Forecasting by Imitating Dynamics in Natural Sequences

机译:通过模仿自然序列动态的视觉预测

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We introduce a general framework for visual forecasting, which directly imitates visual sequences without additional supervision. As a result, our model can be applied at several semantic levels and does not require any domain knowledge or handcrafted features. We achieve this by formulating visual forecasting as an inverse reinforcement learning (IRL) problem, and directly imitate the dynamics in natural sequences from their raw pixel values. The key challenge is the high-dimensional and continuous state-action space that prohibits the application of previous IRL algorithms. We address this computational bottleneck by extending recent progress in model-free imitation with trainable deep feature representations, which (1) bypasses the exhaustive state-action pair visits in dynamic programming by using a dual formulation and (2) avoids explicit state sampling at gradient computation using a deep feature reparametrization. This allows us to apply IRL at scale and directly imitate the dynamics in high-dimensional continuous visual sequences from the raw pixel values. We evaluate our approach at three different level-of-abstraction, from low level pixels to higher level semantics: future frame generation, action anticipation, visual story forecasting. At all levels, our approach outperforms existing methods.
机译:我们向视觉预测介绍了一般框架,它直接模仿视觉序列而无需额外监督。因此,我们的模型可以应用于多个语义级别,并且不需要任何域知识或手工制作功能。我们通过将视觉预测作为反增强学习(IRL)问题的视觉预测来实现这一目标,并直接从原始像素值中仿真自然序列中的动态。关键挑战是禁止应用前ILL算法的高维和连续状态动作空间。通过使用可训练的深度特征表示扩展了最近的模型模仿的最新进展,通过使用双重配方绕过了(1)绕过动态编程中的详尽状态动作对访问,避免在梯度下进行显式状态采样使用深度特征重复化计算。这使我们能够以尺度施加IRL,并直接从原始像素值中模拟高维连续视觉序列中的动态。我们以三种不同的抽象级别评估我们的方法,从低级像素到更高级别的语义:未来帧生成,行动预期,视觉故事预测。在各级,我们的方法优于现有方法。

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