The ability to incrementally learn new classes from limited samples is crucial to the development of artificial intelligence systems for real clinical application. Although existing incremental learning techniques have attempted to address this issue, they still struggle with only few labeled data, particularly when the samples are from varied domains. In this paper, we explore the cross-domain few-shot incremental learning (CDFSCIL) problem. CDFSCIL requires models to learn new classes from very few labeled samples incrementally, and the new classes may be vastly different from the target space. To counteract this difficulty, we propose a cross-domain enhancement constraint and cross-domain data augmentation method. Experiments on MedMNIST show that the classification performance of this method is better than other similar incremental learning methods.
翻译:摘要:从有限样本中增量学习新类别的能力对于开发应用于真实临床的人工智能系统至关重要。尽管现有的增量学习技术已经尝试解决这一问题,但当样本来自不同的领域并且样本数据很少时,它们仍然面临困难。本文研究跨领域少样本增量学习(CDFSCIL)问题。CDFSCIL要求模型能够增量学习非常少的标记样本,并且新类别可能与目标空间大相径庭。为了克服这一困难,我们提出了跨领域增强约束和跨领域数据增强方法。在MedMNIST上的实验结果表明,该方法的分类性能比其他类似的增量学习方法更好。