Curating a large scale fully-annotated dataset can be both labour-intensive and expertise-demanding, especially for medical images. To alleviate this problem, we propose to utilize solely scribble annotations for weakly supervised segmentation. Existing solutions mainly leverage selective losses computed solely on annotated areas and generate pseudo gold standard segmentation by propagating labels to adjacent areas. However, these methods could suffer from the inaccurate and sometimes unrealistic pseudo segmentation due to the insufficient supervision and incomplete shape features. Different from previous efforts, we first investigate the principle of ''good scribble annotations'', which leads to efficient scribble forms via supervision maximization and randomness simulation. Furthermore, we introduce regularization terms to encode the spatial relationship and shape prior, where a new formulation is developed to estimate the mixture ratios of label classes. These ratios are critical in identifying the unlabeled pixels for each class and correcting erroneous predictions, thus the accurate estimation lays the foundation for the incorporation of spatial prior. Finally, we integrate the efficient scribble supervision with the prior into a unified framework, denoted as ZScribbleSeg, and apply the method to multiple scenarios. Leveraging only scribble annotations, ZScribbleSeg set new state-of-the-arts on four segmentation tasks using ACDC, MSCMRseg, MyoPS and PPSS datasets.
翻译:为缓解这一问题,我们建议只使用粗略的批注说明,用于监管监管不力的分解; 现有解决方案主要利用在注解区进行选择性损失,并通过向邻近地区宣传标签,生成假金标准分解; 然而,由于监督不足和形状特征不完整,这些方法可能因不准确和有时不切实际的假分解而受到影响。 不同于以往的努力,我们首先调查“ 良好的拼写说明” 原则,通过监管最大化和随机模拟,导致高效的拼写形式。 此外,我们引入正规化术语,对空间关系和形状进行编码,在此之前将开发新的公式来估计标签等级的混合比率。这些比率对于确定每个等级的无标签像素和纠正错误的预测至关重要,因此准确的估计为纳入空间前期奠定了基础。 最后,我们将高效的拼写监管与前一个统一框架结合起来,仅作为ZcribingSeg, 将新的ScregregiveS-Cregle, 将新的方法应用于多重假设。