一种基于图像处理和神经网络的语义分割算法

Liwei Liu, Daming Qu, Alin Hou
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引用次数: 0

摘要

病灶区域的准确分割对实际医疗具有重要意义。但是,目前分割网络的分割结果不够准确,无法为实际医疗提供指导。为了解决这一问题,提出了一种改进的U-Net分段网络。首先。引入残差模块和新的关注机制对编码器进行优化,使用2×2卷积代替池化操作,在保留空间特征信息的同时,可以对特征进行细化和提取。其次,在上采样跳转连接之前引入注意机制,使网络关注底层特征图的空间信息;在LiTS数据集上对改进的U-Net分割网络进行了评价。与传统的ifnet相比,肝脏分割任务的Dice系数和召回率分别提高了5.6%和3.03%,肝脏肿瘤分割任务的Dice系数和召回率分别提高了7.51%和8.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A semantic segmentation algorithm supported by image processing and neural network
The accurate segmentation of the lesion area is of great significance to the actual medical treatment. However, the segmentation results of the current segmentation network are not accurate enough to provide guidance for actual medical treatment. To solve this problem, a improved U-Net segmentation network is proposed. Firstly. The residual module and new attention mechanism are introduced to optimize the encoder, and 2×2 convolution is used instead of pooling operation, which can refine and extract features while retaining spatial feature information. Secondly, the attention mechanism is introduced before the upsampling jump connection, so that the network pays attention to the spatial information of the low-level feature map. The improved U-Net segmentation network was evaluated on the LiTS datasets. Compared with the traditional If-Net, the Dice coefficient and recall rate are increased by 5.6% and 3.03 % respectively in the liver segmentation task, the Dice coefficient and recall rate are increased by 7.51% and 8.8% respectively in the liver tumor segmentation task.
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