We introduce Neural Representation of Distribution (NeRD) technique, a module for convolutional neural networks (CNNs) that can estimate the feature distribution by optimizing an underlying function mapping image coordinates to the feature distribution. Using NeRD, we propose an end-to-end deep learning model for medical image segmentation that can compensate the negative impact of feature distribution shifting issue caused by commonly used network operations such as padding and pooling. An implicit function is used to represent the parameter space of the feature distribution by querying the image coordinate. With NeRD, the impact of issues such as over-segmenting and missing have been reduced, and experimental results on the challenging white matter lesion segmentation and left atrial segmentation verify the effectiveness of the proposed method. The code is available via https://github.com/tinymilky/NeRD.
翻译:我们引入了神经分布代表(NERD)技术(NERD)技术,这是一个革命神经网络模块,可以通过优化功能映射图像的根座坐标来估计地貌分布。我们利用NERD提出一个医学图像分解的端到端深学习模型,以弥补常见的网络操作如垫圈和集成造成的地貌分布转移问题的负面影响。一个隐含的功能通过查询图像坐标来代表地貌分布的参数空间。与NERD一起,诸如分层过多和缺失等问题的影响已经减少,对具有挑战性的白色物质的分解和左侧分割的实验结果证实了拟议方法的有效性。该代码可通过https://github.com/tinymilky/NERD查阅 https://github. com/tinymilky/NERD查阅。