Deep Adversarial Subspace Clustering

Pan Zhou, Yunqing Hou, Jiashi Feng
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引用次数: 142

Abstract

Most existing subspace clustering methods hinge on self-expression of handcrafted representations and are unaware of potential clustering errors. Thus they perform unsatisfactorily on real data with complex underlying subspaces. To solve this issue, we propose a novel deep adversarial subspace clustering (DASC) model, which learns more favorable sample representations by deep learning for subspace clustering, and more importantly introduces adversarial learning to supervise sample representation learning and subspace clustering. Specifically, DASC consists of a subspace clustering generator and a quality-verifying discriminator, which learn against each other. The generator produces subspace estimation and sample clustering. The discriminator evaluates current clustering performance by inspecting whether the re-sampled data from estimated subspaces have consistent subspace properties, and supervises the generator to progressively improve subspace clustering. Experimental results on the handwritten recognition, face and object clustering tasks demonstrate the advantages of DASC over shallow and few deep subspace clustering models. Moreover, to our best knowledge, this is the first successful application of GAN-alike model for unsupervised subspace clustering, which also paves the way for deep learning to solve other unsupervised learning problems.
深度对抗性子空间聚类
大多数现有的子空间聚类方法依赖于手工表示的自我表达,并且没有意识到潜在的聚类错误。因此,它们在具有复杂子空间的实际数据上的表现并不令人满意。为了解决这个问题,我们提出了一种新的深度对抗性子空间聚类(DASC)模型,该模型通过对子空间聚类的深度学习来学习更有利的样本表示,更重要的是引入对抗性学习来监督样本表示学习和子空间聚类。具体来说,DASC由子空间聚类生成器和质量验证鉴别器组成,它们相互学习。该生成器产生子空间估计和样本聚类。鉴别器通过检查来自估计子空间的重采样数据是否具有一致的子空间属性来评估当前的聚类性能,并监督生成器逐步改进子空间聚类。在手写体识别、人脸和目标聚类任务上的实验结果表明,DASC优于浅子空间聚类模型和少数深子空间聚类模型。此外,据我们所知,这是gan类模型首次成功应用于无监督子空间聚类,这也为深度学习解决其他无监督学习问题铺平了道路。
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