Learning Fixed Points in Generative Adversarial Networks: From Image-to-Image Translation to Disease Detection and Localization.

Md Mahfuzur Rahman Siddiquee, Zongwei Zhou, Nima Tajbakhsh, Ruibin Feng, Michael B Gotway, Yoshua Bengio, Jianming Liang
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引用次数: 74

Abstract

Generative adversarial networks (GANs) have ushered in a revolution in image-to-image translation. The development and proliferation of GANs raises an interesting question: can we train a GAN to remove an object, if present, from an image while otherwise preserving the image? Specifically, can a GAN "virtually heal" anyone by turning his medical image, with an unknown health status (diseased or healthy), into a healthy one, so that diseased regions could be revealed by subtracting those two images? Such a task requires a GAN to identify a minimal subset of target pixels for domain translation, an ability that we call fixed-point translation, which no GAN is equipped with yet. Therefore, we propose a new GAN, called Fixed-Point GAN, trained by (1) supervising same-domain translation through a conditional identity loss, and (2) regularizing cross-domain translation through revised adversarial, domain classification, and cycle consistency loss. Based on fixed-point translation, we further derive a novel framework for disease detection and localization using only image-level annotation. Qualitative and quantitative evaluations demonstrate that the proposed method outperforms the state of the art in multi-domain image-to-image translation and that it surpasses predominant weakly-supervised localization methods in both disease detection and localization. Implementation is available at https://github.com/jlianglab/Fixed-Point-GAN.

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生成对抗网络中的不动点学习:从图像到图像的转换到疾病检测和定位。
生成对抗网络(gan)引领了一场图像到图像翻译的革命。GAN的发展和扩散提出了一个有趣的问题:我们能否训练GAN从图像中删除物体(如果存在),同时保留图像?具体来说,GAN是否可以通过将健康状况未知(患病或健康)的医学图像转换为健康图像,从而通过减去这两个图像来显示患病区域,从而“虚拟地治愈”任何人?这样的任务需要GAN识别目标像素的最小子集进行域翻译,这种能力我们称之为定点翻译,目前还没有GAN具备这种能力。因此,我们提出了一种新的GAN,称为定点GAN,通过(1)通过条件恒等损失监督同域翻译,以及(2)通过修订的对抗性,领域分类和循环一致性损失来规范跨域翻译。基于定点翻译,我们进一步推导了一种仅使用图像级注释的疾病检测和定位的新框架。定性和定量评估表明,所提出的方法在多域图像到图像转换方面优于目前的技术水平,并且在疾病检测和定位方面优于主流的弱监督定位方法。具体实现请访问https://github.com/jlianglab/Fixed-Point-GAN。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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