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Tracing in 2D to reduce the annotation effort for 3D deep delineation of linear structures

机译:在2D中追踪,减少3D深度描绘线性结构的注释工作

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The difficulty of obtaining annotations to build training databases still slows down the adoption of recent deep learning approaches for biomedical image analysis. In this paper, we show that we can train a Deep Net to perform 3D volumetric delineation given only 2D annotations in Maximum Intensity Projections (MIP) of the training volumes. This significantly reduces the annotation time: We conducted a user study that suggests that annotating 2D projections is on average twice as fast as annotating the original 3D volumes. Our technical contribution is a loss function that evaluates a 3D prediction against annotations of 2D projections. It is inspired by space carving, a classical approach to reconstructing complex 3D shapes from arbitrarily-positioned cameras. It can be used to train any deep network with volumetric output, without the need to change the network's architecture. Substituting the loss is all it takes to enable 2D annotations in an existing training setup. In extensive experiments on 3D light microscopy images of neurons and retinal blood vessels, and on Magnetic Resonance Angiography (MRA) brain scans, we show that, when trained on projection annotations, deep delineation networks perform as well as when they are trained using costlier 3D annotations. (C) 2019 Elsevier B.V. All rights reserved.
机译:获取建立培训数据库的注释的难度仍然减缓了最近的生物医学图像分析的深度学习方法。在本文中,我们表明我们可以在训练卷的最大强度投影(MIP)中仅在训练量(MIP)中仅为2D注释进行3D体积描绘。这显着降低了注释时间:我们进行了一个用户研究,表明注释2D投影的平均速度是注释原始3D卷的两倍。我们的技术贡献是一种损失函数,用于评估针对2D投影注释的3D预测。它是通过空间雕刻的启发,这是从任意定位的相机重建复杂3D形状的经典方法。它可用于培训任何具有体积输出的深网络,无需更改网络的架构。替换丢失是所有需要在现有培训设置中启用2D注释。在大量实验上关于神经元和视网膜血管的3D光学显微镜图像,以及磁共振血管造影(MRA)脑扫描,我们表明,当培训投影注释时,深层描绘网络表现,以及使用Costlier 3D培训时注释。 (c)2019年Elsevier B.V.保留所有权利。

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