Deep clustering has attracted increasing attention in recent years due to its capability of joint representation learning and clustering via deep neural networks. In its latest developments, the contrastive learning has emerged as an effective technique to substantially enhance the deep clustering performance. However, the existing contrastive learning based deep clustering algorithms mostly focus on some carefully-designed augmentations (often with limited transformations to preserve the structure), referred to as weak augmentations, but cannot go beyond the weak augmentations to explore the more opportunities in stronger augmentations (with more aggressive transformations or even severe distortions). In this paper, we present an end-to-end deep clustering approach termed strongly augmented contrastive clustering (SACC), which extends the conventional two-augmentation-view paradigm to multiple views and jointly leverages strong and weak augmentations for strengthened deep clustering. Particularly, we utilize a backbone network with triply-shared weights, where a strongly augmented view and two weakly augmented views are incorporated. Based on the representations produced by the backbone, the weak-weak view pair and the strong-weak view pairs are simultaneously exploited for the instance-level contrastive learning (via an instance projector) and the cluster-level contrastive learning (via a cluster projector), which, together with the backbone, can be jointly optimized in a purely unsupervised manner. Experimental results on five challenging image datasets have shown the superior performance of the proposed SACC approach over the state-of-the-art.
翻译:近些年来,由于具有通过深层神经网络进行联合代表学习和集群的能力,深层集群在近年来引起了越来越多的关注。在最新发展动态中,对比式学习已成为一种有效方法,可以大大提高深层集群的绩效。然而,目前以对比式学习为基础的深层群集算法主要侧重于一些精心设计的增强(通常只有有限的转变,以维护结构),称为增强力薄弱,但不能超越薄弱的增强力,探索在更强的增强力方面更多的机会(包括更积极的转变,甚至严重的扭曲 ) 。在本文中,我们提出了一种端至端至端的深层群集方法,称为大力增强对比型群集(SACC),将传统的双向增强型群集模式扩展到多种观点,并联合利用强弱的增强力和弱力的增强力来强化集聚群集集。 特别是,我们利用了一个三重重的骨架网络,其中的观点大大增强,以及两个薄弱的增强的增强力组群集,根据骨干、弱弱弱弱的对和强重的组合观点配对,同时用于实例级对比度的学习(通过一个纯粹的投影视方法,共同进行高超前级的投方案、高超前头级项目、高超前导、高压的级级级级级级级级研究、高压式研究。