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A Deep Motion Deblurring Network Based on Per-Pixel Adaptive Kernels With Residual Down-Up and Up-Down Modules

机译:基于带有残差上下模块的每像素自适应核的深度运动去模糊网络

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Due to the object motion during the camera exposure time, latent pixel information appears scattered in a blurred image. A large dataset of dynamic motion blur and blur-free frame pairs enables deep neural networks to learn deblurring operations directly in end-to-end manners. In this paper, we propose a novel motion deblurring kernel learning network that predicts the per-pixel deblur kernel and a residual image. The learned deblur kernel filters and linearly combines neighboring pixels to restore the clean pixels in its corresponding location. The per-pixel adaptive convolution with the learned deblur kernel can effectively handle non-uniform blur. At the same time, the generated residual image is added to the adaptive convolution result to compensate for the limited receptive field of the learned deblur kernel. That is, the adaptive convolution and the residual image play different but complementary roles each other to reconstruct the latent clean images in a collaborative manner. We also propose residual down-up (RDU) and residual up-down (RUD) blocks that help improve the motion deblurring performance. The RDU and RUD blocks are designed to adjust the spatial size and the number of channels of the intermediate feature within the blocks. We demonstrate the effectiveness of our motion deblurring kernel learning network by showing intensive experimental results compared to those of the state-of-the-art methods.
机译:由于在照相机曝光期间物体运动,潜在的像素信息似乎散布在模糊的图像中。动态运动模糊和无模糊帧对的大型数据集使深度神经网络能够以端到端的方式直接学习去模糊操作。在本文中,我们提出了一种新颖的运动去模糊核学习网络,该网络可以预测每个像素的去模糊核和残差图像。学习到的去模糊核滤波器并线性组合相邻像素,以将干净像素恢复到其对应位置。具有学习的去模糊内核的每像素自适应卷积可以有效地处理非均匀模糊。同时,将生成的残差图像添加到自适应卷积结果中,以补偿学习的去模糊核的有限接收场。即,自适应卷积和残差图像彼此扮演不同但互补的角色,从而以协作的方式重构潜伏清洁图像。我们还提出了残差向下(RDU)和残差向下(RUD)块,以帮助改善运动去模糊性能。 RDU和RUD块旨在调整块内中间要素的空间大小和通道数。我们通过展示密集的实验结果(与最先进的方法相比)来证明我们的运动模糊核学习网络的有效性。

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