X-DECODE: EXtreme Deblurring with Curriculum Optimization and Domain Equalization
Journal:
arXiv
Published Date:
Apr 10, 2025
Abstract
Restoring severely blurred images remains a significant challenge in computer
vision, impacting applications in autonomous driving, medical imaging, and
photography. This paper introduces a novel training strategy based on
curriculum learning to improve the robustness of deep learning models for
extreme image deblurring. Unlike conventional approaches that train on only low
to moderate blur levels, our method progressively increases the difficulty by
introducing images with higher blur severity over time, allowing the model to
adapt incrementally. Additionally, we integrate perceptual and hinge loss
during training to enhance fine detail restoration and improve training
stability. We experimented with various curriculum learning strategies and
explored the impact of the train-test domain gap on the deblurring performance.
Experimental results on the Extreme-GoPro dataset showed that our method
outperforms the next best method by 14% in SSIM, whereas experiments on the
Extreme-KITTI dataset showed that our method outperforms the next best by 18%
in SSIM. Ablation studies showed that a linear curriculum progression
outperforms step-wise, sigmoid, and exponential progressions, while
hyperparameter settings such as the training blur percentage and loss function
formulation all play important roles in addressing extreme blur artifacts.
Datasets and code are available at https://github.com/RAPTOR-MSSTATE/XDECODE