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Semi-Supervised Image Deraining Using Gaussian Processes | IEEE Journals & Magazine | IEEE Xplore

Semi-Supervised Image Deraining Using Gaussian Processes


Abstract:

Recent CNN-based methods for image deraining have achieved excellent performance in terms of reconstruction error as well as visual quality. However, these methods are li...Show More

Abstract:

Recent CNN-based methods for image deraining have achieved excellent performance in terms of reconstruction error as well as visual quality. However, these methods are limited in the sense that they can be trained only on fully labeled data. Due to various challenges in obtaining real world fully-labeled image deraining datasets, existing methods are trained only on synthetically generated data and hence, generalize poorly to real-world images. The use of real-world data in training image deraining networks is relatively less explored in the literature. We propose a Gaussian Process-based semi-supervised learning framework which enables the network in learning to derain using synthetic dataset while generalizing better using unlabeled real-world images. More specifically, we model the latent space vectors of unlabeled data using Gaussian Processes, which is then used to compute pseudo-ground-truth for supervising the network on unlabeled data. The pseudo ground-truth is further used to supervise the network at the intermediate level for the unlabeled data. Through extensive experiments and ablations on several challenging datasets (such as Rain800, Rain200L and DDN-SIRR), we show that the proposed method is able to effectively leverage unlabeled data thereby resulting in significantly better performance as compared to labeled-only training. Additionally, we demonstrate that using unlabeled real-world images in the proposed GP-based framework results in superior performance as compared to the existing methods. Code is available at: https://github.com/rajeevyasarla/Syn2Real.
Published in: IEEE Transactions on Image Processing ( Volume: 30)
Page(s): 6570 - 6582
Date of Publication: 16 July 2021

ISSN Information:

PubMed ID: 34270423

Funding Agency:


I. Introduction

Images captured under rainy conditions are often of poor quality. The artifacts introduced by rain streaks adversely affect the performance of subsequent computer vision algorithms such as object detection and recognition [1]–[4]. With such algorithms becoming vital components in several applications such as autonomous navigation and video surveillance [5]–[7], it is increasingly important to develop algorithms for rain removal.

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References

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