Robust low rank tensor multi-view clustering

Xintong Zou, Yun-jin Zhang, Yanrong Yang
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Abstract

Multi-view Spectral Clustering (MVSC) is a hot research direction in computer vision and machine learning. In recent years, scholars have proposed many MVSC methods based on tensor low rank representation. However, most of them are more suitable for processing noiseless data, but not ideal for noisy data. Inspired by the noise representation idea of hyperspectral noise images, this paper proposes a robust low rank tensor MVSC method for Gaussian and salt and pepper noise data based on MVSC-TLRN method. Similar to MVSC-TLRN method, the proposed method represents the multi-view clustering problem of noise data as a low rank tensor learning problem, which is solved by inexact augmented Lagrangian method. The experimental results on five image datasets and two document datasets show that the proposed method is much better than the existing methods.
鲁棒低秩张量多视图聚类
多视点光谱聚类是计算机视觉和机器学习领域的一个热点研究方向。近年来,学者们提出了许多基于张量低秩表示的MVSC方法。然而,大多数算法更适合处理无噪声数据,而不适合处理有噪声数据。受高光谱噪声图像噪声表示思想的启发,本文在MVSC- tlrn方法的基础上,提出了一种针对高斯噪声和椒盐噪声数据的鲁棒低阶张量MVSC方法。与MVSC-TLRN方法类似,该方法将噪声数据的多视图聚类问题表示为低秩张量学习问题,采用非精确增广拉格朗日方法求解。在5个图像数据集和2个文档数据集上的实验结果表明,该方法明显优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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