Deep image clustering by fusing contrastive learning and neighbor relation mining
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摘要
Contrastive learning is widely used in deep image clustering due to its ability to learn discriminative representations. However, some studies simply combined contrastive learning with clustering. This line of works often ignores semantic meaningful representations and leads to suboptimal performance. In this paper, we propose a new deep image clustering framework called Nearest Neighbor Contrastive Clustering (NNCC), which fuses contrastive learning with neighbor relation mining. During training, contrastive learning and neighbor relation mining are updated alternately, where the former is conducted in the backward pass, while the latter is employed in the forward pass. Specially, we empirically find that data augmentation is an effective technique for generating nearest neighbors manually. A stronger data augmentation means more nearest neighbors involved for learning powerful discriminative representations in the contrastive learning. Due to effective neighbor relation mining, the proposed framework learns more semantic meaningful representations with contrastive learning and obtains more accurate image clusters. Through experimental results on six image datasets, the proposed framework defeats compared state-of-the-arts clustering methods.
论文关键词:Unsupervised learning,Representation learning,Image clustering,Contrastive learning,Nearest neighbors
论文评审过程:Received 16 August 2021, Revised 8 December 2021, Accepted 11 December 2021, Available online 17 December 2021, Version of Record 31 December 2021.
论文官网地址:https://doi.org/10.1016/j.knosys.2021.107967