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引用次数: 0

摘要

对比学习以其鲁棒性和良好的特征表示性能而受到广泛的关注。然而,余弦距离是对比学习中常用的相似度度量,并不适合表示两个数据点之间的距离,特别是在非线性特征流形上。受流形学习的启发,我们提出了一种新的对比学习扩展,利用特征之间的测地线距离作为组织病理学全幻灯片图像分类的相似性度量。为了减少流形学习的计算开销,我们提出了基于测地线距离的特征聚类,使用原型进行有效的对比损失评估,而不需要耗时的两两特征相似性比较。在两个真实世界的组织病理学图像数据集上评估了所提出方法的有效性。结果表明,我们的方法优于最先进的基于余弦距离的对比学习方法。
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Histopathology Image Classification using Deep Manifold Contrastive Learning
Contrastive learning has gained popularity due to its robustness with good feature representation performance. However, cosine distance, the commonly used similarity metric in contrastive learning, is not well suited to represent the distance between two data points, especially on a nonlinear feature manifold. Inspired by manifold learning, we propose a novel extension of contrastive learning that leverages geodesic distance between features as a similarity metric for histopathology whole slide image classification. To reduce the computational overhead in manifold learning, we propose geodesic-distance-based feature clustering for efficient contrastive loss evaluation using prototypes without time-consuming pairwise feature similarity comparison. The efficacy of the proposed method is evaluated on two real-world histopathology image datasets. Results demonstrate that our method outperforms state-of-the-art cosine-distance-based contrastive learning methods.
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