2022
DOI: 10.1101/2022.10.27.514030
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SalienceNet: an unsupervised Image-to-Image translation method for nuclei saliency enhancement in microscopy images

Abstract: Automatic segmentation of nuclei in low-light microscopy images remains a difficult task, especially for high-throughput experiments where need for automation is strong. Low saliency of nuclei with respect to the background, variability of their intensity together with low signal-to-noise ratio in these images constitute a major challenge for mainstream algorithms of nuclei segmentation. In this work we introduce SalienceNet, an unsupervised deep learning-based method that uses the style transfer properties of… Show more

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References 37 publications
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