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Retinal Blood Vessel Segmentation with Improved Convolutional Neural Networks

机译:具有改进的卷积神经网络的视网膜血管分割

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摘要

Retinal blood vessel feature is one of crucial biomarkers for ophthalmologic and cardiovascular diseases, efficiency image segmentation technologies will help doctors diagnose these related diseases. We propose an improved deep CNN model to segment retinal blood vessels. Our method includes three steps: Data augmentation, Image preprocessing methods and Model training. The data augmentation uses the rotation and image mirroring to make the training image better generalization. The CLAHE algorithm is used for image preprocessing, which can reduce the image noise and enhance tiny retinal blood vessels features. Finally, we used a deep CNN model combined with U-Net and Dense-Net structure to train retinal blood vessel image. The result of proposed model was tested on public available dataset DRIVE, achieving an average accuracy 0.951, specificity 0.973, sensitivity 0.797 and the average AUC is 0.885. The results show its potential for clinical application.
机译:视网膜血管特征是眼科和心血管疾病的关键生物标志物之一,效率图像分割技术将有助于医生诊断这些相关疾病。 我们提出了一种改进的深层CNN模型来分段视网膜血管。 我们的方法包括三个步骤:数据增强,图像预处理方法和模型培训。 数据增强使用旋转和图像镜像来使训练图像更好地推广。 CLAHE算法用于图像预处理,可以降低图像噪声并增强微小视网膜血管特征。 最后,我们使用深度CNN模型与U-Net和密集净结构相结合,以训练视网膜血管图像。 在公共可用数据集驱动器上测试了所提出的模型,实现平均精度0.951,特异性0.973,灵敏度0.797和平均AUC为0.885。 结果表明其临床应用的潜力。

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