FLUID: Few-Shot Self-Supervised Image Deraining

Shyam Nandan Rai, Rohit Saluja, Chetan Arora, V. Balasubramanian, A. Subramanian, C.V. Jawahar
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引用次数: 5

Abstract

Self-supervised methods have shown promising results in denoising and dehazing tasks, where the collection of the paired dataset is challenging and expensive. However, we find that these methods fail to remove the rain streaks when applied for image deraining tasks. The method’s poor performance is due to the explicit assumptions: (i) the distribution of noise or haze is uniform and (ii) the value of a noisy or hazy pixel is independent of its neighbors. The rainy pixels are non-uniformly distributed, and it is not necessarily dependant on its neighboring pixels. Hence, we conclude that the self-supervised method needs to have some prior knowledge about rain distribution to perform the deraining task. To provide this knowledge, we hypothesize a network trained with minimal supervision to estimate the likelihood of rainy pixels. This leads us to our proposed method called FLUID: Few Shot Sel f-Supervised Image Deraining.We perform extensive experiments and comparisons with existing image deraining and few-shot image-to-image translation methods on Rain 100L and DDN-SIRR datasets containing real and synthetic rainy images. In addition, we use the Rainy Cityscapes dataset to show that our method trained in a few-shot setting can improve semantic segmentation and object detection in rainy conditions. Our approach obtains a mIoU gain of 51.20 over the current best-performing deraining method. [Project Page]
流体:少镜头自监督图像脱轨
自监督方法在去噪和去雾任务中显示出有希望的结果,其中成对数据集的收集具有挑战性且昂贵。然而,我们发现这些方法在应用于图像脱轨任务时不能去除雨纹。该方法的性能差是由于明确的假设:(i)噪声或雾霾的分布是均匀的,(ii)噪声或雾霾像素的值与其邻居无关。雨像元的分布不均匀,并不一定依赖于邻近像元。因此,我们得出结论,自监督方法需要有一些关于降雨分布的先验知识来执行训练任务。为了提供这些知识,我们假设了一个在最小监督下训练的网络来估计下雨像素的可能性。这导致我们提出的方法称为流体:少数镜头自监督图像脱轨。我们在Rain 100L和DDN-SIRR数据集上进行了大量的实验,并与现有的图像脱除和少量图像到图像的转换方法进行了比较,这些数据集包含真实和合成的降雨图像。此外,我们使用雨天城市景观数据集来证明我们的方法在少数镜头设置下训练可以改善雨天条件下的语义分割和目标检测。我们的方法比目前表现最好的训练方法获得了51.20的mIoU增益。(项目页面)
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