Dopnet: Densely Oriented Pooling Network For Medical Image Segmentation

Mourad Gridach, I. Voiculescu
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引用次数: 3

Abstract

Since manual annotation of medical images is time consuming for clinical experts, reliable automatic segmentation would be the ideal way to handle large medical datasets. Deep learning-based models have been the dominant approach, achieving remarkable performance on various medical segmentation tasks. There can be a significant variation in the size of the feature being segmented out of a medical image relative to the other features in the image, which can be challenging. In this paper, we propose a Densely Oriented Pooling Network (DOPNet) to capture variation in feature size in medical images and preserve spatial interconnection. DOPNet is based on two interdependent ideas: the dense connectivity and the pooling oriented layer. When tested on three publicly available medical image segmentation datasets, the proposed model achieves leading performance.
用于医学图像分割的密集面向池化网络
由于医学图像的手动标注对于临床专家来说非常耗时,可靠的自动分割将是处理大型医学数据集的理想方法。基于深度学习的模型一直是主流方法,在各种医学分割任务中取得了显着的性能。相对于图像中的其他特征,从医学图像中分割出来的特征的大小可能存在显着变化,这可能具有挑战性。在本文中,我们提出了一种密集面向池网络(DOPNet)来捕捉医学图像中特征尺寸的变化并保持空间互连。DOPNet基于两个相互依赖的思想:密集连接和面向池的层。在三个公开可用的医学图像分割数据集上进行了测试,该模型取得了领先的性能。
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