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基于通道注意力与空洞卷积的胸片肺气肿检测算法
引用本文:李策,许大有,靳山岗,高伟哲,陈晓雷.基于通道注意力与空洞卷积的胸片肺气肿检测算法[J].兰州理工大学学报,2022,48(2):81-89.
作者姓名:李策  许大有  靳山岗  高伟哲  陈晓雷
作者单位:兰州理工大学 电气工程与信息工程学院, 甘肃 兰州 730050
基金项目:国家自然科学基金(61866022,61967012)
摘    要:胸片中的肺气肿检测算法在临床辅助诊断中具有重要研究意义.针对已有算法缺乏特征通道筛选能力,特征图感受野较小易受局部组织噪声干扰,以及难易样本不均衡等问题,提出了一种基于通道注意力与空洞卷积的胸片肺气肿检测算法EDACD.首先,利用通道注意力模块构建了具有通道选择能力的特征提取网络SE-ResNet及特征金子塔网络SE-...

关 键 词:肺气肿检测  通道注意力  空洞卷积  焦点损失
收稿时间:2020-11-23

Chest X-ray emphysema detection algorithm based on channel attention and dilated convolution
LI Ce,XU Da-you,JIN Shan-gang,GAO Wei-zhe,CHEN Xiao-lei.Chest X-ray emphysema detection algorithm based on channel attention and dilated convolution[J].Journal of Lanzhou University of Technology,2022,48(2):81-89.
Authors:LI Ce  XU Da-you  JIN Shan-gang  GAO Wei-zhe  CHEN Xiao-lei
Institution:College of Electrical and Information Engineering, Lanzhou Univ. of Tech., Lanzhou 730050, China
Abstract:Emphysema detection algorithm in chest X-ray plays an important role in clinical aided diagnosis. In order to solve the problems in existing algorithms, such as lacking feature channel screening ability, small receptive field of feature map, easy to be disturbed by local tissue noise, sample imbalance, EDACD (a chest X-ray emphysema detection algorithm based on channel attention and dilated convolution) is proposed in this paper. Firstly, the feature extraction network SE-ResNet and the feature pyramid network SE-FPN with channel selection ability are constructed by using channel attention module. At the same time, the dilated convolution is used to replace some common convolutions in SE-ResNet, and the robustness of the features is improved by increasing its receptive field. Finally, the focus loss is used as the classification loss function to make the network focus on training difficult samples. In addition, in the training process, the limited contrast adaptive histogram equalization algorithm is used to preprocess the image, which further highlights the characteristics of emphysema. Through data expansion and clustering labels to optimize the anchor parameters, so as to overcome the scarcity of labeled emphysema data and the inappropriate traditional anchors setting of emphysema. The subjective and objective experiment results in Chestx-Det10 and Chestx-Det14 datasets show that the proposed algorithm has better detection ability than the contrast algorithms.
Keywords:emphysema detection  channel attention  dilated convolution  focal loss  
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