Most of the existing object detection works are based on the bounding box annotation: each object has a precise annotated box. However, for rib fractures, the bounding box annotation is very labor-intensive and time-consuming because radiologists need to investigate and annotate the rib fractures on a slice-by-slice basis. Although a few studies have proposed weakly-supervised methods or semi-supervised methods, they could not handle different forms of supervision simultaneously. In this paper, we proposed a novel omni-supervised object detection network, which can exploit multiple different forms of annotated data to further improve the detection performance. Specifically, the proposed network contains an omni-supervised detection head, in which each form of annotation data corresponds to a unique classification branch. Furthermore, we proposed a dynamic label assignment strategy for different annotated forms of data to facilitate better learning for each branch. Moreover, we also design a confidence-aware classification loss to emphasize the samples with high confidence and further improve the model's performance. Extensive experiments conducted on the testing dataset show our proposed method outperforms other state-of-the-art approaches consistently, demonstrating the efficacy of deep omni-supervised learning on improving rib fracture detection performance.
翻译:大部分现有天体探测工作都以捆绑盒的注释说明为基础:每个天体有一个精确的注解框。然而,对于肋骨骨裂,捆绑盒的注解非常劳动密集和耗时,因为放射学家需要逐切地调查和注解肋骨骨裂,因为放射学家需要逐切地调查和注解。虽然有几项研究提出了监管不力的方法或半监督的方法,但他们无法同时处理不同形式的监督。在本文件中,我们提议建立一个全天体监督的新颖的天体探测网络,它可以利用多种形式的注解数据来进一步改善检测性能。具体地说,拟议的网络包含一个全天体监督的检测头,其中每种形式的注解数据都与一个独特的分类分支相对应。此外,我们提议了一种动态的标签分配战略,以方便每个分支更好地学习。此外,我们还设计了一种有信心的分类损失,以强调样本,并进一步改进模型的性能。在测试数据集中进行的广泛实验,展示了我们不断改进的机能性能性能测试方法,展示了我们不断改进的机骨质压性能测试方法。