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An Automatic Liver Segmentation Algorithm for CT Images U-Net with Separated Paths of Feature Extraction

机译:具有特征提取分离路径的CT图像U-Net自动肝脏分割算法

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In this paper, a fully convolutional neural network based on U-net is proposed to segment the liver in CT images. Two modifications are made to the original U-net structure. Firstly, an extra path is added to the original net structure to extract the global features and detail features separately. Secondly, the number of convolutional channels of the original contraction path, the original expansion path and the new path is reduced. These two modifications make the training more rapid and improve the efficiency of the convolution kernel extraction feature. Then, the segmentation results before and after modification is compared in terms of performance, including recall rate and precision rate, to ensure that the modified network can reach even higher than the original network precision. After that, the paper analyzes the reasons why our network can maintain good segmentation effect and summarizes the application prospect of the modified network.
机译:在本文中,提出了一种基于U-Net的全卷积神经网络,用于在CT图像中分段肝脏。对原始U净结构进行了两个修改。首先,将额外的路径添加到原始网络结构中,以单独提取全局功能和细节功能。其次,降低了原始收缩路径的卷积通道的数量,原始扩展路径和新路径。这两个修改使训练更加快速,提高卷积核提取功能的效率。然后,在性能方面比较修改之前和之后的分段结果,包括召回速率和精度速率,以确保修改的网络甚至可以高于原始网络精度。之后,本文分析了我们的网络可以保持良好的分割效果的原因,并总结了修改网络的应用前景。

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