论文标题
通过对抗域的适应,超宽场和传统的眼底图像之间的域间隙桥接了域间隙
Bridge the Domain Gap Between Ultra-wide-field and Traditional Fundus Images via Adversarial Domain Adaptation
论文作者
论文摘要
几十年来,视网膜成像技术的进步已经实现了使用眼底摄像机对视网膜疾病的有效诊断和管理。最近,Optos摄像机的超宽场(UWF)底面成像逐渐被使用,因为它对某些在传统的眼底图像中通常无法看到的病变具有更广泛的见解。对传统底面图像的研究是一个活跃的主题,但是对UWF底眼图像的研究很少。最重要的原因之一是很难获得UWF底面图像。在本文中,我们第一次探索了从传统的眼底到UWF眼底图像的域适应。我们提出了一个灵活的框架,以弥合两个域之间的域间隙,并通过伪标志和对抗性学习在UWF底面诊断模型之间汇总域间隙。我们设计一种正规化技术来调节域的适应性。此外,我们将混合措施克服了不正确生成的伪标签的过度问题。我们对单个或两个领域的实验结果表明,所提出的方法可以很好地适应和将知识从传统的眼底图像转化为UWF眼底图像,并提高视网膜疾病识别的性能。
For decades, advances in retinal imaging technology have enabled effective diagnosis and management of retinal disease using fundus cameras. Recently, ultra-wide-field (UWF) fundus imaging by Optos camera is gradually put into use because of its broader insights on fundus for some lesions that are not typically seen in traditional fundus images. Research on traditional fundus images is an active topic but studies on UWF fundus images are few. One of the most important reasons is that UWF fundus images are hard to obtain. In this paper, for the first time, we explore domain adaptation from the traditional fundus to UWF fundus images. We propose a flexible framework to bridge the domain gap between two domains and co-train a UWF fundus diagnosis model by pseudo-labelling and adversarial learning. We design a regularisation technique to regulate the domain adaptation. Also, we apply MixUp to overcome the over-fitting issue from incorrect generated pseudo-labels. Our experimental results on either single or both domains demonstrate that the proposed method can well adapt and transfer the knowledge from traditional fundus images to UWF fundus images and improve the performance of retinal disease recognition.