用于张量补全的平滑张量积

Tongle Wu;Jicong Fan
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摘要

低秩张量补全(LRTC)在处理不完整的视觉数据方面大有可为,但它往往忽略了图像和视频中固有的局部平滑结构。低秩张量补全(LRTC)的最新进展是整合总变异正则化,以利用局部平滑性,取得了显著的改进。然而,这些方法仅限于利用原始数据空间内的局部平滑性,忽略了张量的潜在因子空间。更严重的是,局部平滑性在提高恢复性能方面的作用缺乏理论支持。为此,本文介绍了一种创新的张量补全模型,它能同时利用原始张量的全局低秩结构及其因子张量的局部平滑结构。我们的目标是学习一种能分解成两个因子张量的低秩张量,每个因子张量都表现出足够的局部平滑性。我们提出了一种高效的交替方向乘法来优化我们的模型。此外,我们还为各种分解框架中基于平滑因子的张量补全方法建立了广义误差边界。这些界限比现有的基线严格得多。我们在彩色图像、多光谱图像和视频上进行了广泛的内绘实验,证明了我们方法的有效性和优越性。此外,我们的方法对超参数设置的敏感度很低,从而提高了实际应用的便利性和可靠性。
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Smooth Tensor Product for Tensor Completion
Low-rank tensor completion (LRTC) has shown promise in processing incomplete visual data, yet it often overlooks the inherent local smooth structures in images and videos. Recent advances in LRTC, integrating total variation regularization to capitalize on the local smoothness, have yielded notable improvements. Nonetheless, these methods are limited to exploiting local smoothness within the original data space, neglecting the latent factor space of tensors. More seriously, there is a lack of theoretical backing for the role of local smoothness in enhancing recovery performance. In response, this paper introduces an innovative tensor completion model that concurrently leverages the global low-rank structure of the original tensor and the local smooth structure of its factor tensors. Our objective is to learn a low-rank tensor that decomposes into two factor tensors, each exhibiting sufficient local smoothness. We propose an efficient alternating direction method of multipliers to optimize our model. Further, we establish generalization error bounds for smooth factor-based tensor completion methods across various decomposition frameworks. These bounds are significantly tighter than existing baselines. We conduct extensive inpainting experiments on color images, multispectral images, and videos, which demonstrate the efficacy and superiority of our method. Additionally, our approach shows a low sensitivity to hyper-parameter settings, enhancing its convenience and reliability for practical applications.
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