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Efficient 3D Depthwise and Separable Convolutions with Dilation for Brain Tumor Segmentation

机译:高效3D深度和可分离卷曲,具有脑肿瘤分割的扩张

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In this paper, we propose a 3D convolutional neural network targeting at the segmentation of brain tumor. There are different types of brain tumors and our focus is one common type named glioma. The proposed network is efficient and balances the tradeoff between the number of parameters and accuracy of segmentation. It consists of Anisotropic Block, Dilated Parallel Residual Block, and Feature Refinement Module. The Anisotropic Block applies anisotropic convolutional kernels on different branches. In addition, the Dilated Parallel Residual Block incorporates 3D depthwise and separable convolutions to reduce the amount of required parameters dramatically, while multiscale dilated convolutions enlarge the receptive field. The Feature Refinement Module prevents global contextual information loss. Our method is evaluated on the BRATS 2017 dataset. The results show that our method achieved competitive performance among all compared methods, with a reduced number of parameters. The ablation study also proves that each individual block or module is effective.
机译:在本文中,我们提出了一种在脑肿瘤的分割中靶向的3D卷积神经网络。有不同类型的脑肿瘤,我们的重点是一种常见的胶质瘤。所提出的网络是有效的,平衡分割参数数量和准确性之间的权衡。它由各向异性块,扩张并联残余块和特征精制模块组成。各向异性块在不同的分支上施加各向异性卷积粒。另外,扩张的并联残余块包含3D深度和可分离的卷曲,以急剧地减少所需参数的量,而多尺寸扩张的卷轴可扩大接收场。特征精制模块可防止全局上下文信息丢失。我们的方法在Brats 2017数据集上进行了评估。结果表明,我们的方法在所有比较方法之间取得了竞争性能,参数数量减少。消融研究还证明,每个单独的块或模块都是有效的。

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