通过张量增强和补全实现拼接图像补全

Johann A. Bengua, H. Tuan, H. N. Phien, M. Do
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引用次数: 13

摘要

本文提出了一种新的框架——张量增强补全拼接图像补全(ICTAC),该框架可以高精度地恢复彩色图像的缺失项。典型的图像是二阶或三阶张量(2D/3D),这取决于它们是灰度的还是彩色的,因此张量补全算法是理想的恢复方法。所提出的框架通过将具有缺失项的单个图像的副本连接到三阶张量中来执行图像补全,对张量应用维数增强技术,利用张量补全算法恢复其缺失项,最后从张量中提取恢复的图像。该解决方案依赖于最近提出的利用张量序列(TT)秩的两个关键组件:一个名为ket augmentation (KA)的张量增强工具,它通过高阶张量表示低阶张量,以及通过张量序列并行矩阵分解(TMac-TT)的张量补全算法,该算法已被证明优于最先进的张量补全算法。彩色图像恢复的仿真结果显示了我们的框架相对于当前最先进的张量补全算法的明显优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Concatenated image completion via tensor augmentation and completion
This paper proposes a novel framework called concatenated image completion via tensor augmentation and completion (ICTAC), which recovers missing entries of color images with high accuracy. Typical images are second-or third-order tensors (2D/3D) depending if they are grayscale or color, hence tensor completion algorithms are ideal for their recovery. The proposed framework performs image completion by concatenating copies of a single image that has missing entries into a third-order tensor, applying a dimensionality augmentation technique to the tensor, utilizing a tensor completion algorithm for recovering its missing entries, and finally extracting the recovered image from the tensor. The solution relies on two key components that have been recently proposed to take advantage of the tensor train (TT) rank: A tensor augmentation tool called ket augmentation (KA) that represents a low-order tensor by a higher-order tensor, and the algorithm tensor completion by parallel matrix factorization via tensor train (TMac-TT), which has been demonstrated to outperform state-of-the-art tensor completion algorithms. Simulation results for color image recovery show the clear advantage of our framework against current state-of-the-art tensor completion algorithms.
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