Gradient-guided GAN for dynamic scene deblurring

Zhigao Huang, Yixin Zhou, Yu Shi, Jisong Chen, Ting Lai, C. Shao
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Abstract

Dynamic scene blur, mainly caused by camera shake and motions, is one of the most common causes of image degradation. Recent GAN-based strategies have performance on deblurring tasks. To further improve the performance of GAN-based approaches on deblurring tasks, we propose Gradient-guided GAN for dynamic scene deblurring, it includes image restoration branch and gradient branch, which uses the gradient as a guide to supervise the restoration process. In particular, perform an attention fusion of feature image generated by restoration branch and gradient feature image generated by gradient branch, which using gradient information to guide the network to fully learn the deep feature information. Extensive experiments on GOPRO dataset show that our method achieve state-of-the-art performance in dynamic scene deblurring.
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梯度引导GAN动态场景去模糊
动态场景模糊,主要是由相机抖动和运动引起的,是图像退化的最常见原因之一。最近基于gan的策略在去模糊任务上表现良好。为了进一步提高基于GAN的去模糊方法的性能,我们提出了用于动态场景去模糊的梯度引导GAN,它包括图像恢复分支和梯度分支,梯度分支使用梯度作为指导来监督恢复过程。特别是对恢复分支生成的特征图像和梯度分支生成的梯度特征图像进行注意力融合,利用梯度信息引导网络充分学习深度特征信息。在GOPRO数据集上的大量实验表明,我们的方法在动态场景去模糊方面达到了最先进的性能。
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