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Virtually Redying Histological Images with Generative Adversarial Networks to Facilitate Unsupervised Segmentation: A Proof-of-Concept Study

机译:几乎与生成的对抗网络进行了几乎的组织学图像,以促进无监督的细分:概念证明研究

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Approaches relying on adversarial networks facilitate imageto-image-translation based on unpaired training and thereby open new possibilities for special tasks in image analysis. We propose a methodology to improve segmentability of histological images by making use of image-to-image translation. We generate virtual stains and exploit the additional information during segmentation. Specifically a very basic pixel-based segmentation approach is applied in order to focus on the information content available on pixel-level and to avoid any bias which might be introduced by more elaborated techniques. The results of this proof-of-concept trial indicate a performance gain compared to segmentation with the source stain only. Further experiments including more powerful supervised state-of-the-art machine learning approaches and larger evaluation data sets need to follow.
机译:依赖于对抗网络的方法促进了基于未配对培训的Imageto-Image-Plations,从而开辟了在图像分析中的特殊任务的新可能性。我们提出了一种通过利用图像到图像转换来改善组织学图像的分段性的方法。我们生成虚拟污渍并在分段期间利用附加信息。具体地,应用基于基于像素的分割方法,以便专注于在像素级别可用的信息内容,并避免任何可以通过更详细的技术引入的任何偏差。该概念验证试验的结果表明,与源污染的分割相比,性能增益。进一步的实验包括更强大的监督最先进的机器学习方法和更大的评估数据集需要遵循。

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