用于训练分割网络的眼底图像合成

Jannes Magnusson, Ahmed J. Afifi, Shengjia Zhang, A. Ley, O. Hellwich
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引用次数: 0

摘要

医学图像的自动语义分割是使用现代深度学习方法的重要应用,因为它们可以支持临床医生的决策过程。然而,训练这些模型需要大量的训练数据,由于道德和数据保护法规,这些数据在医疗领域尤其难以获得。本文提出了一种合成真实眼底图像的新方法。该过程主要包括血管树的生成和非血管区域(视网膜背景、中央窝和视盘)的合成。我们表明,在训练期间,将(几乎)无限的合成数据与有限的真实数据相结合,可以提高分割性能,而不仅仅是真实数据。我们在DRIVE和STARE数据库上测试了该方法的性能。结果表明,提出的数据增强技术达到了最先进的性能和
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Synthesizing Fundus Photographies for Training Segmentation Networks
Automated semantic segmentation of medical imagery is a vital application using modern Deep Learning methods as they can support clinicians in their decision-making processes. However, training these models requires a large amount of training data which can be especially hard to obtain in the medical field due to ethical and data protection regulations. In this paper, we present a novel method to synthesize realistic retinal fundus images. The process mainly includes the vessel tree generation and synthesis of non-vascular regions (retinal background, fovea, and optic disc). We show that combining the (virtually) unlimited synthetic data with the limited real data during training boosts segmentation performance beyond what can be achieved with real data alone. We test the performance of the proposed method on the DRIVE and STARE databases. The results highlight that the proposed data augmentation technique achieves state-of-the-art performance and
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