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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Enhanced low-rank constraint for temporal subspace clustering and its acceleration scheme
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Enhanced low-rank constraint for temporal subspace clustering and its acceleration scheme

机译:增强时间子空间聚类的低级别约束及其加速度方案

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摘要

Inspired by the temporal subspace clustering (TSC) method and low-rank matrix approximation con straint, a new model is proposed termed as temporal plus low-rank subspace clustering (TLRSC) by utilizing both the local and global structural information. On one hand, to solve the drawback that the nuclear norm-based constraint usually results in a suboptimal solution, we incorporate certain nonconvex surrogates into our model, which approximates the low-rank constraint closely and holds the potential for the convexity of the whole cost function. On the other hand, to ensure fast convergence, we propose an efficient iteratively reweighted singular value minimization (IRSVD) algorithm under the majorization minimization framework. Moreover, we show that for the weighted low-rank constraint, a cutoff can be derived to automatically threshold the singular values computed from the proximal operator. This guaran tees the thresholding operation can be reduced to that of two smaller matrices. Accordingly, an efficient singular value thresholding scheme is proposed for acceleration. Comprehensive experiments are con ducted on several public available datasets for quantitative evaluation. Results demonstrate the efficacy and efficiency of TLRSC compared with several state-of-the-art methods. (C) 2020 Elsevier Ltd. All rights reserved.
机译:受时间子空间聚类(TSC)方法和低秩矩阵近似约束的启发,利用局部和全局结构信息,提出了时间加低秩子空间聚类(TLRSC)模型。一方面,为了解决基于核范数的约束通常会导致次优解的缺点,我们在模型中加入了某些非凸替代项,它非常接近低秩约束,并保持了整个代价函数的凸性。另一方面,为了保证快速收敛,我们在优化最小化框架下提出了一种有效的迭代加权奇异值最小化(IRSVD)算法。此外,我们还表明,对于加权低秩约束,可以导出一个截止点来自动阈值从近端算子计算的奇异值。这保证了阈值运算可以简化为两个较小矩阵的阈值运算。因此,本文提出了一种有效的奇异值阈值加速算法。在几个公共数据集上进行了综合实验,以进行定量评估。结果表明,与几种最先进的方法相比,TLRSC的有效性和效率更高。(C) 2020爱思唯尔有限公司版权所有。

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