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Roto-Translation Covariant Convolutional Networks for Medical Image Analysis

机译:旋转平移协变卷积网络用于医学图像分析

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We propose a framework for rotation and translation covariant deep learning using SE(2) group convolutions. The group product of the special Euclidean motion group SE(2) describes how a concatenation of two roto-translations results in a net roto-translation. We encode this geometric structure into convolutional neural networks (CNNs) via SE(2) group convolutional layers, which fit into the standard 2D CNN framework, and which allow to generically deal with rotated input samples without the need for data augmentation. We introduce three layers: a lifting layer which lifts a 2D (vector valued) image to an SE(2)-image, i.e., 3D (vector valued) data whose domain is SE{2); a group convolution layer from and to an SE(2)-image; and a projection layer from an S.E(2)-image to a 2D image. The lifting and group convolution layers are SE(2) covariant (the output roto-translates with the input). The final projection layer, a maximum intensity projection over rotations, makes the full CNN rotation invariant. We show with three different problems in histopathology, retinal imaging, and electron microscopy that with the proposed group CNNs, state-of-the-art performance can be achieved, without the need for data augmentation by rotation and with increased performance compared to standard CNNs that do rely on augmentation.
机译:我们提出了使用SE(2)组卷积进行旋转和平移协变深度学习的框架。特殊欧几里得运动组SE(2)的组乘积描述了两个旋转平移的串联如何导致净旋转平移。我们通过SE(2)组卷积层将这种几何结构编码为卷积神经网络(CNN),这些卷积层适合于标准2D CNN框架,并允许一般处理旋转的输入样本,而无需进行数据扩充。我们介绍了三层:提升层,将2D(矢量值)图像提升为SE(2)图像,即,其域为SE {2)的3D(矢量值)数据; SE(2)图像之间的组卷积层;从S.E(2)图像到2D图像的投影层。提升和组卷积层是SE(2)协变量(输出与输入旋转平移)。最终的投影层是整个旋转的最大强度投影,使整个CNN旋转不变。我们在组织病理学,视网膜成像和电子显微镜方面存在三个不同的问题,表明通过提议的CNN组,可以实现最新的性能,而无需通过旋转进行数据增强,并且与标准CNN相比具有更高的性能确实依靠增强。

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