3D-UNet Architecture Using Separable 2D Convolutions

Ashlin k Benny
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Abstract

In this decade the main challenge facing in the entire treatment sketch and the evaluation is how vast a brain tumor.one of the most dangerous reason for cancer. Accuracy in quantitative analysis and segmentation of brain are crucial for the treatment sketch. Even though many manual segmentations and magnetic resonance image has emerged they are highly time consuming and error prone.2D and 3D convolutions using neural networks cannot satisfy the whole treating plans of brain tumors even though if possible they are highly expensive in cost of its computation and the demand in its memory .Here we propose 3D UNet architecture using separable 2D convolutions.
使用可分离二维卷积的3D-UNet架构
在这十年中,整个治疗方案和评估面临的主要挑战是脑肿瘤有多大。这是癌症最危险的原因之一。准确的定量分析和脑的分割是治疗草图的关键。尽管已经出现了许多人工分割和磁共振成像,但它们非常耗时且容易出错。使用神经网络的二维和三维卷积不能满足脑肿瘤的整个治疗方案,即使它们在计算成本和内存需求方面是非常昂贵的。在这里,我们提出了使用可分离二维卷积的三维UNet架构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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