HiCo: Hierarchical Contrastive Learning for Ultrasound Video Model Pretraining

Chunhui Zhang, Yixiong Chen, Li Liu, Qiong Liu, Xiaoping Zhou
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引用次数: 3

Abstract

The self-supervised ultrasound (US) video model pretraining can use a small amount of labeled data to achieve one of the most promising results on US diagnosis. However, it does not take full advantage of multi-level knowledge for learning deep neural networks (DNNs), and thus is difficult to learn transferable feature representations. This work proposes a hierarchical contrastive learning (HiCo) method to improve the transferability for the US video model pretraining. HiCo introduces both peer-level semantic alignment and cross-level semantic alignment to facilitate the interaction between different semantic levels, which can effectively accelerate the convergence speed, leading to better generalization and adaptation of the learned model. Additionally, a softened objective function is implemented by smoothing the hard labels, which can alleviate the negative effect caused by local similarities of images between different classes. Experiments with HiCo on five datasets demonstrate its favorable results over state-of-the-art approaches. The source code of this work is publicly available at https://github.com/983632847/HiCo.
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超声视频模型预训练的层次对比学习
自监督超声(US)视频模型预训练可以使用少量标记数据来实现US诊断中最有希望的结果之一。然而,它没有充分利用多层次知识来学习深度神经网络(dnn),因此难以学习可转移的特征表示。本文提出了一种分层对比学习(HiCo)方法来提高美国视频模型预训练的可转移性。HiCo引入了对等层语义对齐和跨层语义对齐,促进了不同语义层之间的交互,有效加快了收敛速度,使学习模型具有更好的泛化和自适应能力。此外,通过对硬标签进行平滑处理,实现了目标函数的软化,减轻了不同类别之间图像局部相似带来的负面影响。在五个数据集上使用HiCo进行的实验表明,它比最先进的方法取得了良好的效果。这项工作的源代码可在https://github.com/983632847/HiCo上公开获得。
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