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Papers/Semi-supervised Transfer Learning for Image Rain Removal

Semi-supervised Transfer Learning for Image Rain Removal

Wei Wei, Deyu Meng, Qian Zhao, Zongben Xu, Ying Wu

2018-07-29CVPR 2019 6Rain RemovalTransfer LearningDeep LearningSingle Image Deraining
PaperPDFCode

Abstract

Single image rain removal is a typical inverse problem in computer vision. The deep learning technique has been verified to be effective for this task and achieved state-of-the-art performance. However, previous deep learning methods need to pre-collect a large set of image pairs with/without synthesized rain for training, which tends to make the neural network be biased toward learning the specific patterns of the synthesized rain, while be less able to generalize to real test samples whose rain types differ from those in the training data. To this issue, this paper firstly proposes a semi-supervised learning paradigm toward this task. Different from traditional deep learning methods which only use supervised image pairs with/without synthesized rain, we further put real rainy images, without need of their clean ones, into the network training process. This is realized by elaborately formulating the residual between an input rainy image and its expected network output (clear image without rain) as a specific parametrized rain streaks distribution. The network is therefore trained to adapt real unsupervised diverse rain types through transferring from the supervised synthesized rain, and thus both the short-of-training-sample and bias-to-supervised-sample issues can be evidently alleviated. Experiments on synthetic and real data verify the superiority of our model compared to the state-of-the-arts.

Results

TaskDatasetMetricValueModel
Rain RemovalTest1200PSNR26.05SEMI
Rain RemovalTest1200SSIM0.822SEMI
Rain RemovalRain100HPSNR16.56SEMI
Rain RemovalRain100HSSIM0.486SEMI
Rain RemovalTest2800PSNR24.43SEMI
Rain RemovalTest2800SSIM0.782SEMI
Rain RemovalTest100PSNR22.35SEMI
Rain RemovalTest100SSIM0.788SEMI
Rain RemovalRain100LPSNR25.03SEMI
Rain RemovalRain100LSSIM0.842SEMI

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