共 48 条
Adaptive multi-granularity sparse subspace clustering
被引:15
作者:
Deng, Tingquan
[1
]
Yang, Ge
[1
]
Huang, Yang
[1
]
Yang, Ming
[1
]
Fujita, Hamido
[2
,3
,4
]
机构:
[1] Harbin Engn Univ, Coll Math Sci, Harbin 150001, Peoples R China
[2] Univ Teknol Malaysia, Malaysia Japan Int Inst Technol MJIIT, Kuala Lumpur 54100, Malaysia
[3] Univ Granada, Andalusian Res Inst Data Sci & Computat Intelligen, Granada, Spain
[4] Iwate Prefectural Univ, Reg Res Ctr, Takizawa 0200693, Japan
基金:
中国国家自然科学基金;
关键词:
Sparse subspace clustering;
Sparse representation;
Scored nearest neighborhood;
Granular computing;
Multi-granularity;
LOW-RANK REPRESENTATION;
DIMENSIONALITY REDUCTION;
ROBUST;
MATRIX;
MODELS;
SEGMENTATION;
ALGORITHM;
D O I:
10.1016/j.ins.2023.119143
中图分类号:
TP [自动化技术、计算机技术];
学科分类号:
0812 ;
摘要:
Sparse subspace clustering (SSC) focuses on revealing data distribution from algebraic perspectives and has been widely applied to high-dimensional data. The key to SSC is to learn the sparsest representation and derive an adjacency graph. Theoretically, the adjacency matrix with proper block diagonal structure leads to a desired clustering result. Various generalizations have been made through imposing Laplacian regularization or locally linear embedding to describe the manifold structure based on the nearest neighborhoods of samples. However, a single set of nearest neighborhoods cannot effectively characterize local information. From the perspective of granular computing, the notion of scored nearest neighborhoods is introduced to develop multi-granularity neighborhoods of samples. The multi-granularity representation of samples is integrated with SSC to collaboratively learn the sparse representation, and an adaptive multi-granularity sparse subspace clustering model (AMGSSC) is proposed. The learned adjacency matrix has a consistent block diagonal structure at all granularity levels. Furthermore, the locally linear relationship between samples is embedded in AMGSSC, and an enhanced AMGLSSC is developed to eliminate the over-sparsity of the learned adjacency graph. Experimental results show the superior performance of both models on several clustering criteria compared with state-of-the-art subspace clustering methods.
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页数:26
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