Removing Rain Streaks via Task Transfer Learning

08/28/2022
by   Yinglong Wang, et al.
6

Due to the difficulty in collecting paired real-world training data, image deraining is currently dominated by supervised learning with synthesized data generated by e.g., Photoshop rendering. However, the generalization to real rainy scenes is usually limited due to the gap between synthetic and real-world data. In this paper, we first statistically explore why the supervised deraining models cannot generalize well to real rainy cases, and find the substantial difference of synthetic and real rainy data. Inspired by our studies, we propose to remove rain by learning favorable deraining representations from other connected tasks. In connected tasks, the label for real data can be easily obtained. Hence, our core idea is to learn representations from real data through task transfer to improve deraining generalization. We thus term our learning strategy as task transfer learning. If there are more than one connected tasks, we propose to reduce model size by knowledge distillation. The pretrained models for the connected tasks are treated as teachers, all their knowledge is distilled to a student network, so that we reduce the model size, meanwhile preserve effective prior representations from all the connected tasks. At last, the student network is fine-tuned with minority of paired synthetic rainy data to guide the pretrained prior representations to remove rain. Extensive experiments demonstrate that proposed task transfer learning strategy is surprisingly successful and compares favorably with state-of-the-art supervised learning methods and apparently surpass other semi-supervised deraining methods on synthetic data. Particularly, it shows superior generalization over them to real-world scenes.

READ FULL TEXT

page 1

page 4

page 6

page 7

research
10/28/2022

Semi-UFormer: Semi-supervised Uncertainty-aware Transformer for Image Dehazing

Image dehazing is fundamental yet not well-solved in computer vision. Mo...
research
06/30/2022

Improving the Generalization of Supervised Models

We consider the problem of training a deep neural network on a given cla...
research
06/22/2022

Towards Ground Truth for Single Image Deraining

We propose a large-scale dataset of real-world rainy and clean image pai...
research
09/02/2021

Transfer of Pretrained Model Weights Substantially Improves Semi-Supervised Image Classification

Deep neural networks produce state-of-the-art results when trained on a ...
research
07/11/2023

Uni-Removal: A Semi-Supervised Framework for Simultaneously Addressing Multiple Degradations in Real-World Images

Removing multiple degradations, such as haze, rain, and blur, from real-...
research
04/15/2020

Joint Supervised and Self-Supervised Learning for 3D Real-World Challenges

Point cloud processing and 3D shape understanding are very challenging t...
research
10/30/2022

Transfer Learning with Synthetic Corpora for Spatial Role Labeling and Reasoning

Recent research shows synthetic data as a source of supervision helps pr...

Please sign up or login with your details

Forgot password? Click here to reset