Warp to the Future: Joint Forecasting of Features and Feature Motion

Josip Saric, Marin Orsic, Tonci Antunovic, Sacha Vrazic, Sinisa Segvic
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引用次数: 21

Abstract

We address anticipation of scene development by forecasting semantic segmentation of future frames. Several previous works approach this problem by F2F (feature-to-feature) forecasting where future features are regressed from observed features. Different from previous work, we consider a novel F2M (feature-to-motion) formulation, which performs the forecast by warping observed features according to regressed feature flow. This formulation models a causal relationship between the past and the future, and regularizes inference by reducing dimensionality of the forecasting target. However, emergence of future scenery which was not visible in observed frames can not be explained by warping. We propose to address this issue by complementing F2M forecasting with the classic F2F approach. We realize this idea as a multi-head F2MF model built atop shared features. Experiments show that the F2M head prevails in static parts of the scene while the F2F head kicks-in to fill-in the novel regions. The proposed F2MF model operates in synergy with correlation features and outperforms all previous approaches both in short-term and mid-term forecast on the Cityscapes dataset.
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曲向未来:特征和特征运动的联合预测
我们通过预测未来帧的语义分割来解决场景发展的预期。之前的一些研究通过F2F(特征到特征)预测来解决这个问题,其中未来的特征是从观察到的特征中回归的。与之前的工作不同,我们考虑了一种新的F2M (feature-to-motion)公式,该公式通过根据回归的特征流对观察到的特征进行翘曲来进行预测。该公式建立了过去和未来之间的因果关系模型,并通过降低预测目标的维数使推理规范化。然而,在观察到的帧中不可见的未来场景的出现不能用翘曲来解释。我们建议用经典的F2F方法补充F2M预测来解决这个问题。我们将这个想法实现为建立在共享功能之上的多头F2MF模型。实验表明,F2M头部在场景的静态部分占上风,而F2F头部则会在新的区域进行填充。所提出的F2MF模型与相关特征协同工作,在城市景观数据集的短期和中期预测方面优于所有先前的方法。
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