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Multi-hypergraph Incidence Consistent Sparse Coding for Image Data Clustering

机译:多超幅入射一致的图像数据聚类稀疏编码

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Sparse representation has been a powerful technique for modeling image data and thus enhance the performance of image clustering. Sparse coding, as an unsupervised way to extract sparse representation, learns a dictionary that represents high-level semantics and the new representations on the dictionary. Though existing sparse coding schemes are considering local manifold structure of the data with graph/hypergraph regularization, more from the manifold should be exploited to utilize intrinsic manifold characteristics in the data. In this paper, we firstly propose a Hypergraph Incidence Consistency regularization term by minimizing the reconstruction error of the hypergraph incidence matrix with sparse codes to further regulate the learned sparse codes with hypergraph-based manifold. Moreover, a multi-hypergraph learning framework to automatically select the optimal manifold structure is integrated into the objective of sparse coding learning, resulting in multi-hypergraph incidence Consistent Sparse Coding (MultiCSC). We show that the MultiCSC objective function can be optimized efficiently, and that several existing sparse coding methods are special cases of MultiCSC. Extensive experimental results on image clustering demonstrate the effectiveness of our proposed method.
机译:稀疏表示是一种用于建模图像数据的强大技术,从而提高图像聚类性能。稀疏编码作为提取稀疏表示的无监督方式,了解表示高级语义和字典上的新表示的字典。尽管现有稀疏编码方案正在考虑具有曲线图/超图规范化的数据的局部歧管结构,但是应该利用来自歧管的更多信息来利用数据中的内在歧管特性。在本文中,我们首先通过最小化具有稀疏码的超图入射矩阵的重建误差来提出超照片发生率一致性规则,以进一步调节基于超图的歧管的学习稀疏代码。此外,用于自动选择最佳歧管结构的多超图学习框架被集成到稀疏编码学习的目标中,导致多超微的入射一致的稀疏编码(MultiCSC)。我们表明,可以有效地优化多态的目标函数,并且几种现有的稀疏编码方法是多态C的特殊情况。图像聚类的广泛实验结果证明了我们提出的方法的有效性。

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