In the segmentation of fine-scale structures from natural and biomedical images, per-pixel accuracy is not the only metric of concern. Topological correctness, such as vessel connectivity and membrane closure, is crucial for downstream analysis tasks. In this paper, we propose a new approach to train deep image segmentation networks for better topological accuracy. In particular, leveraging the power of discrete Morse theory (DMT), we identify global structures, including 1D skeletons and 2D patches, which are important for topological accuracy. Trained with a novel loss based on these global structures, the network performance is significantly improved especially near topologically challenging locations (such as weak spots of connections and membranes). On diverse datasets, our method achieves superior performance on both the DICE score and topological metrics.
翻译:在从自然和生物医学图像中分离精细结构时,每像素精确度并不是唯一值得关注的衡量标准。 诸如船舶连接和膜关闭等地形正确性对于下游分析任务至关重要。 在本文中,我们提出了一种新的方法来培训深层图像分离网络,以提高地形准确性。 特别是,我们利用离散摩斯理论的力量,我们确定了全球结构,包括1D骨架和2D补丁,这对地形精确性很重要。 以这些全球结构为基础的新损失为训练,网络性能显著改善,特别是靠近具有地形挑战性的地点(例如连接和膜的薄弱点 ) 。 在不同的数据集中,我们的方法在DICE分数和地形测量上都取得了优异性业绩。