Image Super-Resolution Reconstruction Method for Lung Cancer CT-Scanned Images Based on Neural Network

Author:

Xu Jianming1ORCID,Liu Weichun1,Qin Yang1,Xu Guangrong1

Affiliation:

1. Provincial Key Laboratory of Informational Service for Rural Area of Southwestern Hunan, Shaoyang University, Shaoyang, 422000 Hunan, China

Abstract

The super-resolution (SR) reconstruction of a single image is an important image synthesis task especially for medical applications. This paper is studying the application of image segmentation for lung cancer images. This research work is utilizing the power of deep learning for resolution reconstruction for lung cancer-based images. At present, the neural networks utilized for image segmentation and classification are suffering from the loss of information where information passes through one layer to another deep layer. The commonly used loss functions include content-based reconstruction loss and generative confrontation network. The sparse coding single-image super-resolution reconstruction algorithm can easily lead to the phenomenon of incorrect geometric structure in the reconstructed image. In order to solve the problem of excessive smoothness and blurring of the reconstructed image edges caused by the introduction of this self-similarity constraint, a two-layer reconstruction framework based on a smooth layer and a texture layer is proposed for a medical application of lung cancer. This method uses a global nonzero gradient number constrained reconstruction model to reconstruct the smooth layer. The proposed sparse coding method is used to reconstruct high-resolution texture images. Finally, a global and local optimization models are used to further improve the quality of the reconstructed image. An adaptive multiscale remote sensing image super-division reconstruction network is designed. The selective core network and adaptive gating unit are integrated to extract and fuse features to obtain a preliminary reconstruction. Through the proposed dual-drive module, the feature prior drive loss and task drive loss are transmitted to the super-resolution network. The proposed work not only improves the subjective visual effect but the robustness has also been enhanced with more accurate construction of edges. The statistical evaluators are used to test the viability of the proposed scheme.

Publisher

Hindawi Limited

Subject

General Immunology and Microbiology,General Biochemistry, Genetics and Molecular Biology,General Medicine

Reference22 articles.

1. Multi-scale feature multiplexing hybrid attention network image reconstruction;L. Zhenghao;Chinese Journal of Image and Graphics,2021

2. Single image super-resolution reconstruction using VGG energy loss;D. Ling;Journal of Software,2021

3. Image super-resolution reconstruction of multi-hop connection residual attention network;L. Zunxiong;Computer Science,2021

4. Medical image super-resolution reconstruction based on generative confrontation network;C. Shengdi;Computer Times,2021

5. Strongly compressed deep forged video detection based on super-resolution reconstruction;S. Lei;Journal of Electronics and Information,2021

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