论文标题

用深网的亮度构成光流预测

Complementing Brightness Constancy with Deep Networks for Optical Flow Prediction

论文作者

Guen, Vincent Le, Rambour, Clément, Thome, Nicolas

论文摘要

光流估计的最新方法取决于深度学习,这需要复杂的顺序训练方案才能在现实世界中达到最佳性能。在这项工作中,我们介绍了组合深网,该网络明确利用了传统方法中使用的亮度恒定(BC)模型。由于BC是在几种情况下违反的近似物理模型,因此我们建议培训与数据驱动网络相辅相成的物理约束网络。我们在物理先验和数据驱动的补体之间引入了独特而有意义的流动分解,包括对BC模型的不确定性量化。我们得出了一种联合培训计划,用于学习分解的不同组成部分,以确保在有监督的和半监督的环境中进行最佳合作。实验表明,组合可以改善对最先进的监督网络的性能,例如木筏在几个基准测试中达到最先进的结果。我们强调组合如何利用BC模型并适应其局限性。最后,我们表明我们的半监督方法可以显着简化训练程序。

State-of-the-art methods for optical flow estimation rely on deep learning, which require complex sequential training schemes to reach optimal performances on real-world data. In this work, we introduce the COMBO deep network that explicitly exploits the brightness constancy (BC) model used in traditional methods. Since BC is an approximate physical model violated in several situations, we propose to train a physically-constrained network complemented with a data-driven network. We introduce a unique and meaningful flow decomposition between the physical prior and the data-driven complement, including an uncertainty quantification of the BC model. We derive a joint training scheme for learning the different components of the decomposition ensuring an optimal cooperation, in a supervised but also in a semi-supervised context. Experiments show that COMBO can improve performances over state-of-the-art supervised networks, e.g. RAFT, reaching state-of-the-art results on several benchmarks. We highlight how COMBO can leverage the BC model and adapt to its limitations. Finally, we show that our semi-supervised method can significantly simplify the training procedure.

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