Classical supervised methods commonly used often suffer from the requirement of an abudant number of training samples and are unable to generalize on unseen datasets. As a result, the broader application of any trained model is very limited in clinical settings. However, few-shot approaches can minimize the need for enormous reliable ground truth labels that are both labor intensive and expensive. To this end, we propose to exploit an optimization-based implicit model agnostic meta-learning {iMAML} algorithm in a few-shot setting for medical image segmentation. Our approach can leverage the learned weights from a diverse set of training samples and can be deployed on a new unseen dataset. We show that unlike classical few-shot learning approaches, our method has improved generalization capability. To our knowledge, this is the first work that exploits iMAML for medical image segmentation. Our quantitative results on publicly available skin and polyp datasets show that the proposed method outperforms the naive supervised baseline model and two recent few-shot segmentation approaches by large margins.
翻译:通常使用的古老监督方法往往需要大量培训样本,无法对无形数据集进行概括分析。因此,在临床环境中,任何经过培训的模型的更广泛应用都非常有限。然而,少见的方法可以最大限度地减少对巨大的可靠地面真相标签的需求,这些标签既需要大量劳动,又昂贵。为此,我们提议在医疗图像分割的几发环境中利用基于优化的隐含模型的不可知的元学习 {iMAML} 算法。我们的方法可以利用从各种培训样本中学到的重量,并可以部署在新的未知数据集中。我们表明,与传统的少见学习方法不同,我们的方法提高了一般化能力。据我们所知,这是利用iMAML进行医学图像分割的首项工作。我们关于公开提供的皮肤和聚谱数据集的定量结果显示,拟议方法超越了天性监督基准模型和最近两个大边缘的微粒分解方法。