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RainFlow: Optical Flow Under Rain Streaks and Rain Veiling Effect

机译:RainFlow:雨纹和雨幕效应下的光流

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Optical flow in heavy rainy scenes is challenging due to the presence of both rain steaks and rain veiling effect, which break the existing optical flow constraints. Concerning this, we propose a deep-learning based optical flow method designed to handle heavy rain. We introduce a feature multiplier in our network that transforms the features of an image affected by the rain veiling effect into features that are less affected by it, which we call veiling-invariant features. We establish a new mapping operation in the feature space to produce streak-invariant features. The operation is based on a feature pyramid structure of the input images, and the basic idea is to preserve the chromatic features of the background scenes while canceling the rain-streak patterns. Both the veiling-invariant and streak-invariant features are computed and optimized automatically based on the the accuracy of our optical flow estimation. Our network is end-to-end, and handles both rain streaks and the veiling effect in an integrated framework. Extensive experiments show the effectiveness of our method, which outperforms the state of the art method and other baseline methods. We also show that our network can robustly maintain good performance on clean (no rain) images even though it is trained under rain image data.
机译:由于雨块和雨罩效应的存在,打破了多雨场景中的光流,这打破了现有的光流限制。对此,我们提出了一种基于深度学习的光流方法,旨在处理大雨。我们在网络中引入了一个特征倍增器,可以将受雨幕效果影响的图像的特征转换为受雨幕效果影响较小的特征,我们称其为不变面特征。我们在特征空间中建立新的映射操作以产生条纹不变特征。该操作基于输入图像的特征金字塔结构,基本思想是在取消雨条纹的同时保留背景场景的色度特征。根据我们的光流估计的准确性,可以自动计算和优化面纱不变和条纹不变特征。我们的网络是端到端的,并在集成框架中处理降雨条纹和遮盖效果。大量的实验证明了我们方法的有效性,其性能优于现有方法和其他基准方法。我们还表明,即使在雨天图像数据下进行训练,我们的网络也可以在干净(无雨天)图像上稳定地保持良好的性能。

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