Wang Shuqin, Lin Zhiping, Cao Qi, Cen Yigang, Chen Yongyong
IEEE Trans Image Process. 2023;32:4059-4072. doi: 10.1109/TIP.2023.3293764. Epub 2023 Jul 19.
Multi-view subspace clustering aims to integrate the complementary information contained in different views to facilitate data representation. Currently, low-rank representation (LRR) serves as a benchmark method. However, we observe that these LRR-based methods would suffer from two issues: limited clustering performance and high computational cost since (1) they usually adopt the nuclear norm with biased estimation to explore the low-rank structures; (2) the singular value decomposition of large-scale matrices is inevitably involved. Moreover, LRR may not achieve low-rank properties in both intra-views and inter-views simultaneously. To address the above issues, this paper proposes the Bi-nuclear tensor Schatten- p norm minimization for multi-view subspace clustering (BTMSC). Specifically, BTMSC constructs a third-order tensor from the view dimension to explore the high-order correlation and the subspace structures of multi-view features. The Bi-Nuclear Quasi-Norm (BiN) factorization form of the Schatten- p norm is utilized to factorize the third-order tensor as the product of two small-scale third-order tensors, which not only captures the low-rank property of the third-order tensor but also improves the computational efficiency. Finally, an efficient alternating optimization algorithm is designed to solve the BTMSC model. Extensive experiments with ten datasets of texts and images illustrate the performance superiority of the proposed BTMSC method over state-of-the-art methods.
多视图子空间聚类旨在整合不同视图中包含的互补信息,以促进数据表示。目前,低秩表示(LRR)是一种基准方法。然而,我们观察到这些基于LRR的方法存在两个问题:聚类性能有限和计算成本高,原因如下:(1)它们通常采用带有偏差估计的核范数来探索低秩结构;(2)不可避免地涉及大规模矩阵的奇异值分解。此外,LRR可能无法在视图内和视图间同时实现低秩特性。为了解决上述问题,本文提出了用于多视图子空间聚类的双核张量Schatten-p范数最小化(BTMSC)方法。具体而言,BTMSC从视图维度构建一个三阶张量,以探索多视图特征的高阶相关性和子空间结构。利用Schatten-p范数的双核拟范数(BiN)分解形式将三阶张量分解为两个小规模三阶张量的乘积,这不仅捕捉了三阶张量的低秩特性,还提高了计算效率。最后,设计了一种高效的交替优化算法来求解BTMSC模型。在十个文本和图像数据集上进行的大量实验表明,所提出的BTMSC方法优于现有方法。