Segmenting an entire 3D image often has high computational complexity and requires large memory consumption; by contrast, performing volumetric segmentation in a slice-by-slice manner is efficient but does not fully leverage the 3D data. To address this challenge, we propose a multi-dimensional attention network (MDA-Net) to efficiently integrate slice-wise, spatial, and channel-wise attention into a U-Net based network, which results in high segmentation accuracy with a low computational cost. We evaluate our model on the MICCAI iSeg and IBSR datasets, and the experimental results demonstrate consistent improvements over existing methods.
翻译:将整个三维图像进行分解往往具有很高的计算复杂性,需要大量内存消耗;相比之下,以切片切片切片方式进行体积分解是有效的,但不能充分利用三维数据。为了应对这一挑战,我们提议建立一个多维关注网络(MDA-Net),以便有效地将切片、空间和频道关注纳入基于U-Net的网络,从而导致高分解精度和低计算成本。我们评估了MICCAI iSeg 和 IBSR 数据集的模型,实验结果显示现有方法不断改进。