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Split-Attention Multiframe Alignment Network for Image Restoration

机译:用于图像恢复的分流多帧对齐网络

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Image registration (or image alignment), the problem of aligning multiple images with relative displacement, is a crucial step in many multiframe image restoration algorithms. To solve the problem that most existing image registration approaches can only align two images in one inference, we propose a split-attention multiframe alignment network (SAMANet). Pixel-level displacements between multiple images are first estimated at low-resolution scales and then refined gradually with the increase in feature resolution. To better integrate the interframe information, we present a split-attention module (SAM) and a dot-product attention module (DPAM), which can adaptively rescale the cost volume features and optical flow features according to the similarity between features from different images. The experimental results demonstrate the superiority of our SAMANet over state-of-the-art image registration methods in terms of both accuracy and robustness. To solve the & x201C;ghosting effect& x201D; caused by pixelwise registration, we designed two & x201C;ghost& x201D; removal modules: warping repetition detection module (WRDM) and attention fusion module (AFM). WRDM detects & x201C;ghost& x201D; regions during the image warping process without increasing the time complexity of the registration algorithm. AFM uses an attention mechanism to rescale the aligned images and enables the registration network and the subsequent image restoration networks to be trained jointly. To validate the strengths of the proposed approaches, we apply SAMANet, WRDM and AFM to three image/video restoration tasks. Extensive evaluations demonstrate that the proposed methods can enhance the performance of image restoration algorithms and outperform the other compared registration algorithms.
机译:图像登记(或图像对齐),以相对位移对准多个图像的问题是许多多帧图像恢复算法中的重要步骤。为了解决大多数现有图像登记方法只能在一次推断中对准两个图像的问题,我们提出了一种分裂的多帧对齐网络(Samanet)。首先以低分辨率刻度估计多个图像之间的像素级位移,然后随着特征分辨率的增加而逐渐精制。为了更好地整合互联网信息,我们介绍了一个分裂模块(SAM)和DOT-Products注意模块(DPAM),其可以根据来自不同图像的特征之间的相似性自适应地重新归类成本体积特征和光流特征。实验结果表明,在精度和鲁棒性方面,我们的Samanet通过最先进的图像登记方法的优越性。解决&x201c;重影效果和x201d;由PixElwate注册引起的,我们设计了两个&x201c; ghost&x201d;拆卸模块:翘曲重复检测模块(WRDM)和注意融合模块(AFM)。 WRDM检测&x201c; ghost&x201d;图像翘曲过程中的区域而不增加登记算法的时间复杂性。 AFM使用注意机制来重新归类对齐图像,并使登记网络和随后的图像恢复网络共同培训。为了验证所提出的方法的优势,我们将Samanet,WRDM和AFM应用于三个图像/视频修复任务。广泛的评估表明,所提出的方法可以提高图像恢复算法的性能,并且优于其他比较的比较算法。

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