A Novel Multi-Task Self-Supervised Representation Learning Paradigm

Yinggang Li, Junwei Hu, Jifeng Sun, Shuai Zhao, Qi Zhang, Yibin Lin
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引用次数: 2

Abstract

Self-supervised learning can be adopted to mine deep semantic information of visual data without a large number of human-annotated supervision by using a pretext task to pretrain a model. In this study, we proposed a novel self-supervised learning paradigm, namely multi-task self-supervised (MTSS) representation learning. Unlike existing self-supervised learning methods, which pretrain neural networks on the pretext task and then fine-tune the parameters of neural networks on the downstream task, in our scheme, downstream and pretext tasks are considered primary and auxiliary tasks, respectively, and are trained simultaneously. Our method involves maximizing the similarity of two augmented views of an image as an auxiliary task and using a multi-task network to train the primary task alongside the auxiliary task. We evaluated the proposed method on standard datasets and backbones through a rigorous experimental procedure. Experimental results revealed that proposed MTSS can achieve better performance and robustness than other self-supervised learning methods on multiple image classification data sets without using negative sample pairs and large batches. This simple yet effective method can inspire people to rethink self-supervised learning.
一种新的多任务自监督表征学习范式
利用借口任务对模型进行预训练,可以在不需要大量人工标注监督的情况下,利用自监督学习来挖掘视觉数据的深层语义信息。在本研究中,我们提出了一种新的自监督学习范式,即多任务自监督表征学习。现有的自监督学习方法是在借口任务上预训练神经网络,然后在下游任务上微调神经网络的参数,而在我们的方案中,下游任务和借口任务分别被视为主要任务和辅助任务,并同时进行训练。我们的方法包括将图像的两个增强视图的相似性最大化作为辅助任务,并使用多任务网络在辅助任务的同时训练主任务。我们通过严格的实验程序在标准数据集和主干上评估了所提出的方法。实验结果表明,在不使用负样本对和大批量的情况下,MTSS在多图像分类数据集上取得了比其他自监督学习方法更好的性能和鲁棒性。这种简单而有效的方法可以启发人们重新思考自我监督学习。
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