论文标题
用于医学图像分割的标签有效的混合监督学习
Label-efficient Hybrid-supervised Learning for Medical Image Segmentation
论文作者
论文摘要
由于缺乏医学图像注释的专业知识,因此对医学图像分割的标签有效方法的研究成为一个加热的主题。最近的进展集中在有效利用弱注释以及很少有强烈的标签上,以在许多非专业的情况下实现可比的分割性能。但是,这些方法仅集中于强烈和弱宣布的实例之间的监督不一致,但忽略了弱注册的实例中的实例不一致,这不可避免地导致绩效退化。为了解决这个问题,我们提出了一个新颖的标签有效的杂交监督框架,该框架对每个弱通量的实例进行了单独的实例,并学习了其重量的指导,这是由强烈注释的实例的梯度方向引导的,因此,在强大的实例中,高素质的先验是更好地利用的实例,并且更弱化的实例更加精确地予以清理。特别是,我们设计的动态实例指标(DII)实现了上述目标,并改编了我们的动态共同规范(DCR)框架,以减轻弱注释扭曲的错误积累。对两个混合监管的医学分割数据集进行了广泛的实验表明,只有10%强标签,该拟议的框架可以有效利用弱标签,并在100%强标监督的情况下实现竞争性能。
Due to the lack of expertise for medical image annotation, the investigation of label-efficient methodology for medical image segmentation becomes a heated topic. Recent progresses focus on the efficient utilization of weak annotations together with few strongly-annotated labels so as to achieve comparable segmentation performance in many unprofessional scenarios. However, these approaches only concentrate on the supervision inconsistency between strongly- and weakly-annotated instances but ignore the instance inconsistency inside the weakly-annotated instances, which inevitably leads to performance degradation. To address this problem, we propose a novel label-efficient hybrid-supervised framework, which considers each weakly-annotated instance individually and learns its weight guided by the gradient direction of the strongly-annotated instances, so that the high-quality prior in the strongly-annotated instances is better exploited and the weakly-annotated instances are depicted more precisely. Specially, our designed dynamic instance indicator (DII) realizes the above objectives, and is adapted to our dynamic co-regularization (DCR) framework further to alleviate the erroneous accumulation from distortions of weak annotations. Extensive experiments on two hybrid-supervised medical segmentation datasets demonstrate that with only 10% strong labels, the proposed framework can leverage the weak labels efficiently and achieve competitive performance against the 100% strong-label supervised scenario.