Vascular segmentation extracts blood vessels from images and serves as the basis for diagnosing various diseases, like ophthalmic diseases. Ophthalmologists often require high-resolution segmentation results for analysis, which leads to super-computational load by most existing methods. If based on low-resolution input, they easily ignore tiny vessels or cause discontinuity of segmented vessels. To solve these problems, the paper proposes an algorithm named SuperVessel, which gives out high-resolution and accurate vessel segmentation using low-resolution images as input. We first take super-resolution as our auxiliary branch to provide potential high-resolution detail features, which can be deleted in the test phase. Secondly, we propose two modules to enhance the features of the interested segmentation region, including an upsampling with feature decomposition (UFD) module and a feature interaction module (FIM) with a constraining loss to focus on the interested features. Extensive experiments on three publicly available datasets demonstrate that our proposed SuperVessel can segment more tiny vessels with higher segmentation accuracy IoU over 6%, compared with other state-of-the-art algorithms. Besides, the stability of SuperVessel is also stronger than other algorithms. We will release the code after the paper is published.
翻译:血管分解从图像中提取血管,并作为诊断各种疾病,如眼科疾病的基础。眼科医生通常需要高分辨率分解结果进行分析,从而导致大部分现有方法的超计算负荷。如果以低分辨率输入为基础,它们很容易忽视小容器,或造成分解船只的不连续性。为了解决这些问题,本文建议使用低分辨率图像作为输入,使用高分辨率和准确的分解方法来诊断各种疾病。我们首先将超级分辨率作为我们的辅助分支,以提供潜在的高分辨率详细特征,在试验阶段可以删除。第二,我们提议两个模块来增强有关分解区域的特征,包括用低分辨率输入的特性分解(UFFD)模块进行升级,以及一个有限制损失的特征互动模块(FIM),以关注有关特征。对三种公开提供的数据集进行广泛的实验表明,我们提议的超级血管分解系统可以将小容器分解得更多分解精度IOU超过6%,而在试验阶段中可以删除。第二,我们提出两个模块,以加强有关分解区域的特性特征特征特征特征特征的特征特征特征特征特征,包括特征分解模型,比其他已出版的稳定性更强。