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Image Completion with Filtered Low-Rank Tensor Train Approximations

机译:通过过滤的低级张力列车近似图像完成

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The topic of image completion has received increasing attention in recent years, motivated by many important applications in computer vision, data mining and image processing. In this study, we consider the problem of recovering missing values of pixels in highly incomplete images with a random or irregular structure. The analyzed gray-scale or colour images are transformed to multi-way arrays which are then recursively approximated by low-rank tensor decomposition models. In our approach, the multi-way array is represented by the tensor train model, and in each iterative step, the low-rank approximation is filtered with the Gaussian low-pass filter. As a result, the proposed algorithms considerably outperform the state-of-the art methods for matrix and tensor completion problems, especially when an incompleteness degree is very high, e.g. with 90% of missing pixels.
机译:近年来,图像完成的主题已收到越来越多的关注,这是计算机视觉,数据挖掘和图像处理中的许多重要应用。在这项研究中,我们考虑用随机或不规则结构在高度不完整的图像中恢复像素缺失值的问题。分析的灰度或彩色图像被转换为​​多向阵列,然后通过低级张量分解模型递归地近似。在我们的方法中,多向阵列由张量列车模型表示,并且在每个迭代步骤中,用高斯低通滤波器滤波低秩近似。结果,所提出的算法大大优于矩阵和张量完成问题的最新方法,特别是当不完整程度非常高时,例如,如此。 90%的缺失像素。

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