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A k-Dense-UNet for Biomedical Image Segmentation

机译:用于生物医学图像分割的K-Dense-Unet

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摘要

Medical image segmentation is the premise of many medical image applications including disease diagnosis, anatomy, and radiation therapy. This paper presents a k-Dense-UNet for segmentation of Electron Microscopy (EM) images. Firstly, based on the characteristics of the long skip connection of U-Net and the mechanism of short skip connection of DenseNet, we propose a Dense-UNet by embedding the dense blocks into U-Net, leading to deeper layers for better feature extraction. We experimentally show that Dense-UNet outperforms the popular U-Net. Secondly, we combine Dense-UNet with one of the newest U-Net variants called kU-Net into a network called k-Dense-UNet, which consists of multiple Dense-UNet submodules. Skip connections are added between the adjacent submodules, to pass information efficiently, helping the model to identify fine features. Experimental results on the ISBI 2012 EM dataset show that k-Dense-UNet achieves better performance than U-Net and some of its variants.
机译:医学图像分割是许多医学图像应用的前提,包括疾病诊断,解剖学和放射治疗。本文介绍了电子显微镜(EM)图像的k-dense-unet。首先,基于U-Net的长跳过连接的特点和斩象的短跳跃连接,通过将密集的块嵌入U-Net中,提出了一种致密的作用,导致更深的层进行更好的特征提取。我们通过实验表明密集的UNET优于流行的U-Net。其次,我们将密集的UNET与一个名为Ku-Net的一个称为Ku-Net的一个称为K-Dense-Unet的网络,其中包括多个致密杂交子模块。在相邻的子模块之间添加跳过连接,以有效传递信息,帮助模型识别精细特征。 ISBI 2012 EM数据集上的实验结果表明,K-Dense-UNET比U-Net和其一些变体实现更好的性能。

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