IGU-Aug: Information-guided unsupervised augmentation and pixel-wise contrastive learning for medical image analysis.

Quan Quan, Qingsong Yao, Heqin Zhu, S Kevin Zhou
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Abstract

Contrastive learning (CL) is a form of self-supervised learning and has been widely used for various tasks. Different from widely studied instance-level contrastive learning, pixel-wise contrastive learning mainly helps with pixel-wise dense prediction tasks. The counter-part to an instance in instance-level CL is a pixel, along with its neighboring context, in pixel-wise CL. Aiming to build better feature representation, there is a vast literature about designing instance augmentation strategies for instance-level CL; but there is little similar work on pixel augmentation for pixel-wise CL with a pixel granularity. In this paper, we attempt to bridge this gap. We first classify a pixel into three categories, namely low-, medium-, and high-informative, based on the information quantity the pixel contains. We then adaptively design separate augmentation strategies for each category in terms of augmentation intensity and sampling ratio. Extensive experiments validate that our information-guided pixel augmentation strategy succeeds in encoding more discriminative representations and surpassing other competitive approaches in unsupervised local feature matching. Furthermore, our pretrained model improves the performance of both one-shot and fully supervised models. To the best of our knowledge, we are the first to propose a pixel augmentation method with a pixel granularity for enhancing unsupervised pixel-wise contrastive learning. Code is available at https: //github.com/Curli-quan/IGU-Aug.

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IGU-Aug:用于医学图像分析的信息引导无监督增强和像素对比学习。
对比学习(Contrastive Learning,CL)是一种自我监督学习,已被广泛应用于各种任务中。与广泛研究的实例级对比学习不同,像素级对比学习主要用于像素级密集预测任务。在像素对比学习中,与实例级对比学习中的实例相对应的是像素及其相邻上下文。为了建立更好的特征表示,有大量文献介绍了如何为实例级 CL 设计实例增强策略;但对于像素粒度的像素级 CL,却鲜有类似的像素增强研究。在本文中,我们试图弥合这一差距。首先,我们根据像素包含的信息量将其分为三类,即低信息量、中等信息量和高信息量。然后,我们根据增强强度和采样率为每个类别设计了不同的增强策略。广泛的实验验证了我们以信息为导向的像素增强策略能够成功地编码出更具区分度的表征,并在无监督局部特征匹配中超越了其他竞争方法。此外,我们的预训练模型还提高了单次模型和完全监督模型的性能。据我们所知,我们是第一个提出以像素粒度增强无监督像素对比学习的像素增强方法的人。代码见 https://github.com/Curli-quan/IGU-Aug.
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