| Literature DB >> 30692071 |
Yangyang Wu1, Feng Yang1, Jing Huang1, Yaqin Liu1.
Abstract
The low-resolution ultrasound images have poor visual effects. Herein we propose a method for generating clearer intravascular ultrasound images based on super-resolution reconstruction combined with generative adversarial networks. We used the generative adversarial networks to generate the images by a generator and to estimate the authenticity of the images by a discriminator. Specifically, the low-resolution image was passed through the sub-pixel convolution layer r2-feature channels to generate r2-feature maps in the same size, followed by realignment of the corresponding pixels in each feature map into r ×r sub-blocks, which corresponded to the sub-block in a high-resolution image; after amplification, an image with a r2-time resolution was generated. The generative adversarial networks can obtain a clearer image through continuous optimization. We compared the method (SRGAN) with other methods including Bicubic, super-resolution convolutional network (SRCNN) and efficient sub-pixel convolutional network (ESPCN), and the proposed method resulted in obvious improvements in the peak signal-to-noise ratio (PSNR) by 2.369 dB and in structural similarity index by 1.79% to enhance the diagnostic visual effects of intravascular ultrasound images.Keywords: generative adversarial network; intravascular ultrasound; sub-pixel convolution layer; super-resolution reconstruction
Mesh:
Year: 2019 PMID: 30692071 PMCID: PMC6765585 DOI: 10.12122/j.issn.1673-4254.2019.01.13
Source DB: PubMed Journal: Nan Fang Yi Ke Da Xue Xue Bao ISSN: 1673-4254