DFGAN: Image Deblurring through Fusing Light-Weight Attention and Gradient-Based Filters

Ali Syed Saqlain, Fang Fang, Li-Yun Wang, Tanvir Ahmad, Z. Abidin
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引用次数: 2

Abstract

Recovering a latent sharp image from a spatially variant blurred image is a challenging task in the field of computer vision especially in blind image deblurring, where the source of the blur kernel is unknown and may vary. To remove the intricate motion blur in the images, recently deep learning-based methods perform latent clean image recovery without the need of knowing the blur kernel explicitly. Unlike conventional blind deblurring methods that assume the blur to be spatially invariant across the image. However, simply stacking convolution layers in deep multi-scale networks does not guarantee the complete removal of motion blur in the images and may lead to a poor performance for blind image deblurring task. Thus, we propose a GAN-based approach for single image blind motion deblurring task in an end-to-end manner, for simplicity its called DeblurFusedGAN (DFGAN). The proposed method improves the performance for image deblurring task by fusing the light-weight attention (LSA) mechanism and gradient-based filters in the generator network. Furthermore, we show the sophisticated performance of our proposed approach both qualitatively and quantitatively in comparison with the other state-of-the-art methods.
DFGAN:通过融合轻量级注意和基于梯度的滤波器来消除图像模糊
在计算机视觉领域,从空间变化的模糊图像中恢复潜在的清晰图像是一项具有挑战性的任务,特别是在盲图像去模糊中,模糊核的来源是未知的,并且可能会变化。为了消除图像中复杂的运动模糊,最近基于深度学习的方法在不需要明确知道模糊核的情况下执行潜在的干净图像恢复。不像传统的盲去模糊方法,假设模糊在整个图像中是空间不变的。然而,在深度多尺度网络中,简单地叠加卷积层并不能保证完全去除图像中的运动模糊,并且可能导致盲目图像去模糊任务的性能不佳。因此,我们提出了一种基于gan的端到端单图像盲运动去模糊的方法,为了简单起见,它被称为DeblurFusedGAN (DFGAN)。该方法通过在生成器网络中融合轻量级注意(LSA)机制和基于梯度的滤波器来提高图像去模糊任务的性能。此外,与其他最先进的方法相比,我们在定性和定量上展示了我们提出的方法的复杂性能。
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