The analysis of organ vessels is essential for computer-aided diagnosis and surgical planning. But it is not a easy task since the fine-detailed connected regions of organ vessel bring a lot of ambiguity in vessel segmentation and sub-type recognition, especially for the low-contrast capillary regions. Furthermore, recent two-staged approaches would accumulate and even amplify these inaccuracies from the first-stage whole vessel segmentation into the second-stage sub-type vessel pixel-wise classification. Moreover, the scarcity of manual annotation in organ vessels poses another challenge. In this paper, to address the above issues, we propose a hierarchical deep network where an attention mechanism localizes the low-contrast capillary regions guided by the whole vessels, and enhance the spatial activation in those areas for the sub-type vessels. In addition, we propose an uncertainty-aware semi-supervised training framework to alleviate the annotation-hungry limitation of deep models. The proposed method achieves the state-of-the-art performance in the benchmarks of both retinal artery/vein segmentation in fundus images and liver portal/hepatic vessel segmentation in CT images.
翻译:对器官船只的分析对于计算机辅助诊断和外科手术规划至关重要,但这不是一项容易的任务,因为器官船只细细的连接区域给船只的分解和亚型识别带来许多模糊不清之处,特别是对于低调的毛毛虫区域而言。此外,最近的两阶段办法将积累甚至扩大从第一级整个船只分解到第二阶段次类船只像素分类的不准确之处。此外,器官船只人工注解不足又构成另一个挑战。为了解决上述问题,我们建议建立一个等级深层次的网络,在这个网络中,关注机制将由整个船只引导的低调毛细区域本地化,并加强亚型船只在这些区域的空间活动。此外,我们提议建立一个有不确定性的半监督性培训框架,以缓解深层模型的批注-饥饿限制。拟议方法在基金图象和肝脏图象/肝脏图片部分的Retiny/vein分解基准中达到最先进的性工作表现。