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Hierarchical Representation For Ct Prostate Segmentation

机译:Ct前列腺分割的分层表示

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Traditional approaches for automatic CT prostate segmentation often guide feature representation learning directly based on manual delineation to deal with this challenging task (due to unclear boundaries and large shape variations), which does not fully exploit the prior information and leads to insufficient discriminability. In this paper, we propose a novel hierarchical representation learning method to segment the prostate in CT images. Specifically, one multi-task model under the supervision of a series of morphological masks transformed from the manual delineation aims to generate hierarchical feature representations for the prostate. Then, leveraging both these generated rich representations and intensity images, one fully convolutional network (FCN) carries out the accurate segmentation of the prostate. To evaluate the performance, a large and challenging CT dataset is adopted, and the experimental results show our method achieves significant improvement compared with conventional FCNs.
机译:用于自动CT前列腺自动分割的传统方法通常会直接基于手动描绘来指导特征表示学习,以处理这一具有挑战性的任务(由于边界不清晰和形状变化较大),这无法充分利用现有信息并导致可识别性不足。在本文中,我们提出了一种新颖的分层表示学习方法来分割CT图像中的前列腺。具体地,在由手动描绘转换的一系列形态学面具的监督下的一个多任务模型旨在为前列腺产生分层的特征表示。然后,利用这些生成的丰富表示和强度图像,一个完全卷积网络(FCN)进行前列腺的精确分割。为了评估性能,采用了庞大而具有挑战性的CT数据集,实验结果表明,与传统FCN相比,我们的方法取得了显着改进。

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