过完全深度低秩子空间聚类

Yongmeng Feng, Cong-Zhe You
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引用次数: 0

摘要

针对深度子空间聚类网络(DSC)中输入数据存在噪声时鲁棒性差、性能明显下降、可学习参数过多等问题,提出了一种过完备深度低秩子空间聚类(ODLRSC)方法。该技术易于使用,效率高,并且非常适合子空间聚类。在我们建议的技术中,通过在编码器和解码器之间插入一个完全连接的线性层及其换位,我们可以自动地对学习到的表示施加秩限制。此外,为了获得更可靠的输入数据表示用于聚类,在编码器中融合了欠完备和过完备自编码器网络的特征。根据在基准数据集上的实验结果,我们的技术在聚类误差方面优于DSC和其他聚类算法,并且可以在大范围的lrr中保持高质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Overcomplete Deep Low-Rank Subspace Clustering
Aiming at the fact that when the input data in the deep subspace clustering networks (DSC) has noise, its robustness is poor, the performance is significantly degraded, and the method has too many learnable parameters, we suggest an overcomplete deep low-rank subspace clustering (ODLRSC). The technique is easy to use, efficient, and has shown to be a great fit for subspace clustering. By inserting a fully connected linear layer and its transposition between the encoder and decoder in our suggested technique, we may automatically put rank restrictions on the learnt representations. Additionally, in order to obtain a more reliable representation of the input data for clustering, the characteristics of the under- and over-complete auto-encoder networks are fused in the encoder. Our technique beats DSC and other clustering algorithms in the field of clustering error, and can sustain high level of quality throughout a broad range of LRRs, according to experimental findings on benchmark datasets.
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