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Joint optic disc and cup segmentation based on densely connected depthwise separable convolution deep network

机译:基于密集连接深度可分离卷积深网络的关节光盘和杯分割

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Glaucoma is an eye disease that causes vision loss and even blindness. The cup to disc ratio (CDR) is an important indicator for glaucoma screening and diagnosis. Accurate segmentation for the optic disc and cup helps obtain CDR. Although many deep learning-based methods have been proposed to segment the disc and cup for fundus image, achieving highly accurate segmentation performance is still a great challenge due to the heavy overlap between the optic disc and cup. In this paper, we propose a two-stage method where the optic disc is firstly located and then the optic disc and cup are segmented jointly according to the interesting areas. Also, we consider the joint optic disc and cup segmentation task as a multi-category semantic segmentation task for which a deep learning-based model named DDSC-Net (densely connected depthwise separable convolution network) is proposed. Specifically, we employ depthwise separable convolutional layer and image pyramid input to form a deeper and wider network to improve segmentation performance. Finally, we evaluate our method on two publicly available datasets, Drishti-GS and REFUGE dataset. The experiment results show that the proposed method outperforms state-of-the-art methods, such as pOSAL, GL-Net, M-Net and Stack-U-Net in terms of disc coefficients, with the scores of 0.9780 (optic disc) and 0.9123 (optic cup) on the DRISHTI-GS dataset, and the scores of 0.9601 (optic disc) and 0.8903 (optic cup) on the REFUGE dataset. Particularly, in the more challenging optic cup segmentation task, our method outperforms GL-Net by 0.7 $$%$$ in terms of disc coefficients on the Drishti-GS dataset and outperforms pOSAL by 0.79 $$%$$ on the REFUGE dataset, respectively. The promising segmentation performances reveal that our method has the potential in assisting the screening and diagnosis of glaucoma.
机译:青光眼是一种眼病,导致视觉损失甚至失明。杯子比率(CDR)是青光眼筛查和诊断的重要指标。光盘和杯子的准确分割有助于获得CDR。虽然已经提出了许多基于深度学习的方法来分割用于眼底图像的光盘和杯子,但由于光盘和杯子之间的重叠重叠而实现高度准确的分割性能仍然是一个很大的挑战。在本文中,我们提出了一种双级方法,其中光盘首先定位,然后根据有趣的区域共同地分割光盘和杯子。此外,我们将关节光盘和杯分割任务视为一个多类语义分割任务,其中提出了一种名为DDSC-Net(密切连接的深度可分离卷积网络)的深度学习的模型。具体地,我们采用深度可分离的卷积层和图像金字塔输入来形成更深层次和更广泛的网络以改善分段性能。最后,我们在两个公共数据集,DRISHTI-GS和避难数据集中评估我们的方法。实验结果表明,该方法在盘系数方面优于最先进的方法,例如PALL,GL-NET,M-NET和Stack-U-Net,分数为0.9780(光盘) DRISHTI-GS数据集上的0.9123(视镜杯)以及避难数据集上的0.9601(光盘)和0.8903(光学杯)的分数。特别是,在较具有挑战性的光学杯分割任务中,我们的方法在DRISHTI-GS数据集上的光盘系数方面优于0.7 $$%$$,并且在避难所数据集中优于0.79 $$%$$。分别。有前途的分割性能表明,我们的方法具有促进筛查和诊断青光眼的潜力。

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