张量(固有定义)
聚类分析
奇异值分解
计算机科学
模式识别(心理学)
人工智能
塔克分解
秩(图论)
合成数据
代表(政治)
子空间拓扑
噪音(视频)
算法
数学
图像(数学)
张量分解
组合数学
政治
政治学
纯数学
法学
作者
Jing‐Hua Yang,Chuan Chen,Hong‐Ning Dai,Meng Ding,Zhebin Wu,Zibin Zheng
标识
DOI:10.1109/tnnls.2022.3215983
摘要
Tensor analysis has received widespread attention in high-dimensional data learning. Unfortunately, the tensor data are often accompanied by arbitrary signal corruptions, including missing entries and sparse noise. How to recover the characteristics of the corrupted tensor data and make it compatible with the downstream clustering task remains a challenging problem. In this article, we study a generalized transformed tensor low-rank representation (TTLRR) model for simultaneously recovering and clustering the corrupted tensor data. The core idea is to find the latent low-rank tensor structure from the corrupted measurements using the transformed tensor singular value decomposition (SVD). Theoretically, we prove that TTLRR can recover the clean tensor data with a high probability guarantee under mild conditions. Furthermore, by using the transform adaptively learning from the data itself, the proposed TTLRR model can approximately represent and exploit the intrinsic subspace and seek out the cluster structure of the tensor data precisely. An effective algorithm is designed to solve the proposed model under the alternating direction method of multipliers (ADMMs) algorithm framework. The effectiveness and superiority of the proposed method against the compared methods are showcased over different tasks, including video/face data recovery and face/object/scene data clustering.
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