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Learning Brightness Transfer Functions for the Joint Recovery of Illumination Changes and Optical Flow

机译:学习亮度传递函数,用于联合回收照明变化和光学流量

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The increasing importance of outdoor applications such as driver assistance systems or video surveillance tasks has recently triggered the development of optical flow methods that aim at performing robustly under uncontrolled illumination. Most of these methods are based on patch-based features such as the normalized cross correlation, the census transform or the rank transform. They achieve their robustness by locally discarding both absolute brightness and contrast. In this paper, we follow an alternative strategy: Instead of discarding potentially important image information, we propose a novel variational model that jointly estimates both illumination changes and optical flow. The key idea is to parametrize the illumination changes in terms of basis functions that are learned from training data. While such basis functions allow for a meaningful representation of illumination effects, they also help to distinguish real illumination changes from motion-induced brightness variations if supplemented by additional smoothness constraints. Experiments on the KITTI benchmark show the clear benefits of our approach. They do not only demonstrate that it is possible to obtain meaningful basis functions, they also show state-of-the-art results for robust optical flow estimation.
机译:驾驶辅助系统或视频监控任务等户外应用的越来越重要最近引发了光学流动方法的开发,其目的在不受控制的照明下稳健地进行。这些方法中的大多数基于基于补丁的特征,例如标准化的互相关,人口普查变换或秩变换。他们通过局部丢弃绝对亮度和对比来实现稳健性。在本文中,我们遵循另一种策略:而不是丢弃潜在的重要图像信息,我们提出了一种新颖的变分模型,共同估计了照明变化和光学流量。关键的想法是参加来自训练数据学习的基础函数的照明变化。虽然这种基本功能允许有意义的照明效果的表示,但是如果通过额外的平滑度约束补充,它们还有助于区分从运动引起的亮度变化的真实照明变化。基蒂基准测试的实验表明了我们方法的明显效益。它们不仅证明可以获得有意义的基本函数,它们还可以显示最先进的结果,以实现鲁棒光学流量估计。

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