首页> 外国专利> 3D Anisotropic Hybrid Network: Transferring Convolutional Features from 2D Images to 3D Anisotropic Volumes

3D Anisotropic Hybrid Network: Transferring Convolutional Features from 2D Images to 3D Anisotropic Volumes

机译:3D各向异性混合网络:将卷积特征从2D图像转移到3D各向异性体

摘要

A computer-implemented method for identifying features in 3D image volumes includes dividing a 3D volume into a plurality of 2D slices and applying a pre-trained 2D multi-channel global convolutional network (MC-GCN) to the plurality of 2D slices until convergence. Following convergence of the 2D MC-GCN, a plurality of parameters are extracted from a first feature encoder network in the 2D MC-GCN. The plurality of parameters are transferred to a second feature encoder network in a 3D Anisotropic Hybrid Network (AH-Net). The 3D AH-Net is applied to the 3D volume to yield a probability map;. Then, using the probability map, one or more of (a) coordinates of the objects with non-maximum suppression or (b) a label map of objects of interest in the 3D volume are generated.
机译:一种用于识别3D图像体积中的特征的计算机实现的方法,包括将3D体积划分为多个2D切片,并将预训练的2D多通道全局卷积网络(MC-GCN)应用到多个2D切片,直到收敛。在2D MC-GCN收敛之后,从2D MC-GCN中的第一特征编码器网络中提取多个参数。多个参数被传送到3D各向异性混合网络(AH-Net)中的第二特征编码器网络。将3D AH-Net应用于3D体积以生成概率图。然后,使用概率图,生成(a)具有非最大抑制的对象的坐标或(b)3D体积中的关注对象的标签图中的一个或多个。

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