Localization of anatomical landmarks is essential for clinical diagnosis, treatment planning, and research. In this paper, we propose a novel deep network, named feature aggregation and refinement network (FARNet), for the automatic detection of anatomical landmarks. To alleviate the problem of limited training data in the medical domain, our network adopts a deep network pre-trained on natural images as the backbone network and several popular networks have been compared. Our FARNet also includes a multi-scale feature aggregation module for multi-scale feature fusion and a feature refinement module for high-resolution heatmap regression. Coarse-to-fine supervisions are applied to the two modules to facilitate the end-to-end training. We further propose a novel loss function named Exponential Weighted Center loss for accurate heatmap regression, which focuses on the losses from the pixels near landmarks and suppresses the ones from far away. Our network has been evaluated on three publicly available anatomical landmark detection datasets, including cephalometric radiographs, hand radiographs, and spine radiographs, and achieves state-of-art performances on all three datasets. Code is available at: \url{https://github.com/JuvenileInWind/FARNet}
翻译:解剖地标的本地化对于临床诊断、治疗规划和研究至关重要。在本文中,我们提议建立一个名为特征集成和精细网络的新深层次网络(FARNet),用于自动检测解剖地标。为了缓解医疗领域培训数据有限的问题,我们的网络采用了以自然图像为主干网和若干广受欢迎的网络进行初步培训的深层次网络。我们的FARNet还包括一个多尺度特征聚合的多尺度特征集成模块和一个高分辨率热映射回归的精细化模块。对两个模块应用了粗到精密的监督,以促进端到端的培训。我们进一步提议了一个名为 " 暴露性重心中心损失 " 的新型损失功能,以准确的热映射回归为主干线,侧重于离远地点附近的像素的损失,压制远处的象素损失。我们的网络已经根据三种公开提供的解剖地标地标检测数据集进行了评估,包括天线测量、手射线和脊柱射线测量。我们提出的新的损失功能功能是:状态/网络运行的所有数据。