论文标题
使用生成对抗网络的医疗图像生成
Medical Image Generation using Generative Adversarial Networks
论文作者
论文摘要
生成的对抗网络(GAN)是计算机视觉社区中无监督的深度学习方法,从过去的几年开始,它在确定多模式医学成像数据的内部结构方面引起了人们的关注。对抗网络同时生成逼真的医学图像和相应的注释,事实证明,在许多情况下,例如图像增强,图像注册,医学图像生成,图像重建和图像到图像的翻译很有用。这些特性引起了研究人员在医学图像分析领域的关注,我们在许多新颖和传统应用中的快速适应性见证。本章在医学图像生成和跨模式合成中基于GAN的临床应用中提供了最新的进展。在医学图像的解释中获得流行的各种gan框架,例如深卷积gan(DCGAN),Laplacian Gan(Lapgan),Pix2Pix,Cyclean和Uneupucted Image-To-Image Training Translation模型(单元),继续通过合并其他混合建筑,继续提高其性能,以改善其性能。此外,涵盖了这些框架在图像重建和合成以及该地区未来的研究方向的最新应用。
Generative adversarial networks (GANs) are unsupervised Deep Learning approach in the computer vision community which has gained significant attention from the last few years in identifying the internal structure of multimodal medical imaging data. The adversarial network simultaneously generates realistic medical images and corresponding annotations, which proven to be useful in many cases such as image augmentation, image registration, medical image generation, image reconstruction, and image-to-image translation. These properties bring the attention of the researcher in the field of medical image analysis and we are witness of rapid adaption in many novel and traditional applications. This chapter provides state-of-the-art progress in GANs-based clinical application in medical image generation, and cross-modality synthesis. The various framework of GANs which gained popularity in the interpretation of medical images, such as Deep Convolutional GAN (DCGAN), Laplacian GAN (LAPGAN), pix2pix, CycleGAN, and unsupervised image-to-image translation model (UNIT), continue to improve their performance by incorporating additional hybrid architecture, has been discussed. Further, some of the recent applications of these frameworks for image reconstruction, and synthesis, and future research directions in the area have been covered.