Segmenting dental plaque from images of medical reagent staining provides valuable information for diagnosis and the determination of follow-up treatment plan. However, accurate dental plaque segmentation is a challenging task that requires identifying teeth and dental plaque subjected to semantic-blur regions (i.e., confused boundaries in border regions between teeth and dental plaque) and complex variations of instance shapes, which are not fully addressed by existing methods. Therefore, we propose a semantic decomposition network (SDNet) that introduces two single-task branches to separately address the segmentation of teeth and dental plaque and designs additional constraints to learn category-specific features for each branch, thus facilitating the semantic decomposition and improving the performance of dental plaque segmentation. Specifically, SDNet learns two separate segmentation branches for teeth and dental plaque in a divide-and-conquer manner to decouple the entangled relation between them. Each branch that specifies a category tends to yield accurate segmentation. To help these two branches better focus on category-specific features, two constraint modules are further proposed: 1) contrastive constraint module (CCM) to learn discriminative feature representations by maximizing the distance between different category representations, so as to reduce the negative impact of semantic-blur regions on feature extraction; 2) structural constraint module (SCM) to provide complete structural information for dental plaque of various shapes by the supervision of an boundary-aware geometric constraint. Besides, we construct a large-scale open-source Stained Dental Plaque Segmentation dataset (SDPSeg), which provides high-quality annotations for teeth and dental plaque. Experimental results on SDPSeg datasets show SDNet achieves state-of-the-art performance.
翻译:然而,准确的牙科牙板分割是一项具有挑战性的任务,需要识别受语义和语义区域(即,牙齿和牙科广场之间的界限混乱)影响的牙齿和牙科广场,以及复杂的体形变异,而现有方法并未充分解决这些变异。因此,我们提议建立一个语义分解网络(SDNet),引入两个单任务分支,分别处理牙齿和牙科广场的分解问题,并设计额外的制约因素,以学习每个分支的分类结构结构结构的特征,从而便利语义分解,改善牙齿和牙形分解的性能。具体地说,SDNet以分解方式为牙齿和牙形分解两个不同的分解处,现有方法未充分解决这些变异性关系。每个分支指定一个类别,可以产生准确的分解。为了帮助这两个分支更好地关注具体类别和牙科广场的分解,还设计了额外的制约模块,以学习每个分支的分类结构结构结构结构分解,从而进一步提出:1) Strealal dealal deal deal dal destrical deal destration ex demographal destration laphal demogration sal demodustrism rodustration rodustration rodustration rodustration roduction roduction roduction roduction smal roductions