Nonnegative Low-Rank Tensor Completion via Dual Formulation with Applications to Image and Video Completion

T. Sinha, Jayadev Naram, Pawan Kumar
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引用次数: 7

Abstract

Recent approaches to the tensor completion problem have often overlooked the nonnegative structure of the data. We consider the problem of learning a nonnegative low-rank tensor, and using duality theory, we propose a novel factorization of such tensors. The factorization decouples the nonnegative constraints from the low-rank constraints. The resulting problem is an optimization problem on manifolds, and we propose a variant of Riemannian conjugate gradients to solve it. We test the proposed algorithm across various tasks such as colour image inpainting, video completion, and hyperspectral image completion. Experimental results show that the proposed method outperforms many state-of-the-art tensor completion algorithms.
基于对偶公式的非负低秩张量补全及其在图像和视频补全中的应用
最近研究张量补全问题的方法往往忽略了数据的非负结构。考虑了一个非负低秩张量的学习问题,利用对偶理论,提出了一种新的非负低秩张量的分解方法。因式分解将非负约束与低秩约束解耦。所得到的问题是流形上的一个优化问题,我们提出了黎曼共轭梯度的一个变体来解决它。我们在各种任务中测试了所提出的算法,如彩色图像绘制,视频补全和高光谱图像补全。实验结果表明,该方法优于许多最先进的张量补全算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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