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Random 2.5D U-net for Fully 3D Segmentation

机译:随机2.5D U-net进行全3D分割

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摘要

Convolutional neural networks are state-of-the-art for various segmentation tasks. While for 2D images these networks are also computationally efficient, 3D convolutions have huge storage requirements and therefore, end-to-end training is limited by GPU memory and data size. To overcome this issue, we introduce a network structure for volumetric data without 3D convolution layers. The main idea is to include projections from different directions to transform the volumetric data to a sequence of images, where each image contains information of the full data. We then apply 2D convolutions to these projection images and lift them again to volumetric data using a trainable reconstruction algorithm. The proposed architecture can be applied end-to-end to very large data volumes without cropping or sliding-window techniques. For a tested sparse binary segmentation task, it outperforms already known standard approaches and is more resistant to generation of artefacts.
机译:卷积神经网络是用于各种分割任务的最新技术。尽管对于2D图像,这些网络在计算上也很有效,但是3D卷积具有巨大的存储要求,因此,端到端训练受到GPU内存和数据大小的限制。为了克服这个问题,我们引入了一种不带3D卷积层的体积数据网络结构。主要思想是包括来自不同方向的投影,以将体积数据转换为图像序列,其中每个图像都包含完整数据的信息。然后,我们将2D卷积应用于这些投影图像,并使用可训练的重建算法将其再次提升为体积数据。所提出的体系结构可以端到端地应用于非常大的数据量,而无需裁剪或滑动窗口技术。对于经过测试的稀疏二进制分割任务,其性能优于已知的标准方法,并且更能抵抗伪像的产生。

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