Auto-Encoder based deep subspace clustering (DSC) is widely used in computer vision, motion segmentation and image processing. However, it suffers from the following three issues in the self-expressive matrix learning process: the first one is less useful information for learning self-expressive weights due to the simple reconstruction loss; the second one is that the construction of the self-expression layer associated with the sample size requires high-computational cost; and the last one is the limited connectivity of the existing regularization terms. In order to address these issues, in this paper we propose a novel model named Self-Supervised deep Subspace Clustering with Entropy-norm (S$^{3}$CE). Specifically, S$^{3}$CE exploits a self-supervised contrastive network to gain a more effetive feature vector. The local structure and dense connectivity of the original data benefit from the self-expressive layer and additional entropy-norm constraint. Moreover, a new module with data enhancement is designed to help S$^{3}$CE focus on the key information of data, and improve the clustering performance of positive and negative instances through spectral clustering. Extensive experimental results demonstrate the superior performance of S$^{3}$CE in comparison to the state-of-the-art approaches.
翻译:在计算机视觉、运动分割和图像处理中广泛使用基于深层子空间群集(DSC),但是,在自我表达式矩阵学习过程中,它有以下三个问题:第一,由于简单的重建损失,用于学习自我表达权重的信息不那么有用;第二,与样本尺寸相关的自我表达层的建设需要高量计算成本;最后,现有规范化条件的连接有限。为了解决这些问题,我们在本文件中提议了一个名为“自上层与 Entropy-norm 的深层子空间群集”的新模式(S$3}CE)。具体地说,S$3}CE利用一个自我监督的对比网络来获得一个更软化的特性矢量。原始数据的结构与密集的连接受益于自我表达层和额外的酶-诺姆限制。此外,我们设计了一个加强数据的新模块,以帮助S$_3}CEE关注关键数据信息,通过S-CE3的高级光谱化模型演示S-CE3的高级组合结果。