数学
奇异值分解
张量(固有定义)
张量积
对称张量
离散傅里叶变换(通用)
Hilbert空间的张量积
张量密度
笛卡尔张量
矩阵分解
张量收缩
傅里叶变换
数学分析
算法
分数阶傅立叶变换
张量场
纯数学
傅里叶分析
广义相对论的精确解
物理
量子力学
特征向量
作者
Guang‐Jing Song,Michael K. Ng,Xiongjun Zhang
摘要
Summary In this article, we study robust tensor completion by using transformed tensor singular value decomposition (SVD), which employs unitary transform matrices instead of discrete Fourier transform matrix that is used in the traditional tensor SVD. The main motivation is that a lower tubal rank tensor can be obtained by using other unitary transform matrices than that by using discrete Fourier transform matrix. This would be more effective for robust tensor completion. Experimental results for hyperspectral, video and face datasets have shown that the recovery performance for the robust tensor completion problem by using transformed tensor SVD is better in peak signal‐to‐noise ratio than that by using Fourier transform and other robust tensor completion methods.
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