Chest X-ray images super-resolution reconstruction via recursive neural network

被引:0
|
作者
Chao-Yue Zhao
Rui-Sheng Jia
Qing-Ming Liu
Xiao-Ying Liu
Hong-Mei Sun
Xing-Li Zhang
机构
[1] Shandong University of Science and Technology,College of Computer Science and Engineering
[2] Shandong University of Science and Technology,Shandong Province Key Laboratory of Wisdom Mine Information Technology
来源
关键词
Detail complementary module; Deep learning; Medical images; Recursive neural network; Super-resolution reconstruction;
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中图分类号
学科分类号
摘要
To address the problems of insufficient detail extraction and long training time in the super-resolution reconstruction of chest X-ray images, a method of chest X-ray images super-resolution reconstruction using recursive neural network is proposed in this paper. Firstly, this paper designs a lightweight recursive network as the main branch, which solves the problem of training difficulty and time-consuming. Then, to overcome the lack of detail extraction in chest X-ray image, a detail complementary model is designed as another branch of the network to solve the problem of shallow information loss. Finally, the optimized activation function is used to reduce the loss of texture details and make the reconstructed image more complete and richer. When the scale factor is 2, the experimental results show that compared with other methods based on deep learning, such as the deep recursive neural network (DRCN), the details of chest X-ray images reconstructed by our method are more abundant. Specifically, the average value of PSNR and SSIM were improved by 0.17 dB and 0.0013 respectively. Moreover, the reconstruction speed of the images was increased by about 16% compared with DRCN.
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页码:263 / 277
页数:14
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