Multi-view subspace clustering aims to discover the hidden subspace structures from multiple views for robust clustering, and has been attracting considerable attention in recent years. Despite significant progress, most of the previous multi-view subspace clustering algorithms are still faced with two limitations. First, they usually focus on the consistency (or commonness) of multiple views, yet often lack the ability to capture the cross-view inconsistencies in subspace representations. Second, many of them overlook the local structures of multiple views and cannot jointly leverage multiple local structures to enhance the subspace representation learning. To address these two limitations, in this paper, we propose a jointly smoothed multi-view subspace clustering (JSMC) approach. Specifically, we simultaneously incorporate the cross-view commonness and inconsistencies into the subspace representation learning. The view-consensus grouping effect is presented to jointly exploit the local structures of multiple views to regularize the view-commonness representation, which is further associated with the low-rank constraint via the nuclear norm to strengthen its cluster structure. Thus the cross-view commonness and inconsistencies, the view-consensus grouping effect, and the low-rank representation are seamlessly incorporated into a unified objective function, upon which an alternating optimization algorithm is performed to achieve a robust subspace representation for clustering. Experimental results on a variety of real-world multi-view datasets confirm the superiority of our approach.
翻译:多视角子空间群集旨在从多种观点中发现隐藏的子空间结构,以便进行稳健的分组,近年来一直引起相当的关注。尽管取得了显著的进展,但以往多数多视角子空间群集算法仍面临两个限制。首先,它们通常侧重于多种观点的一致性(或共性),但往往缺乏捕捉子空间代表面上交叉观点不一致现象的能力。第二,其中许多国家忽视了多重观点的地方结构,无法联合利用多个地方结构来强化子空间代表制学习。为了解决这两个限制,我们在本文件中提议了一种联合平滑的多视角子空间群集(JSMC)方法。具体地说,我们同时将交叉观点的共同性和不一致性纳入子空间代表面代表制学习中。观点群集效应是共同利用多个观点的本地结构来规范观点-共性代表制,这与通过核规范的低约束性来加强其分组结构进一步相关。因此,我们提出了一种交叉观点的共性和不一致性、组合效应和低级别代表制(JSMC)方法。我们同时将交叉观点的共观的共观共同性和不一致性纳入子空间代表制模式,从而实现一个稳定、优化的多空间代表制,从而实现一个稳定、稳定地压式的次世界的组合。