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Semi-supervised Learning for Biomedical Image Segmentation via Forest Oriented Super Pixels (Voxels)

机译:通过林定向超像素(体素)的生物医学图像分割半监督学习

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In this paper, we focus on semi-supervised learning for biomedical image segmentation, so as to take advantage of huge unlabelled data. We observe that there usually exist some homogeneous connected areas of low confidence in biomedical images, which tend to confuse the classifier trained with limited labelled samples. To cope with this difficulty, we propose to construct forest oriented super pixels(voxels) to augment the standard random forest classifier, in which super pixels(voxels) are built upon the forest based code. Compared to the state-of-the-art, our proposed method shows superior segmentation performance on challenging 2D/3D biomedical images. The full implementation (based on Matlab) is available at https://github.com/lingucv/ssl_superpixels.
机译:在本文中,我们专注于生物医学图像分割的半监督学习,从而利用巨大的未标记数据。 我们观察到,通常存在一些在生物医学图像中的低置信度的均匀连接区域,这倾向于将培训的分类器混淆,这些分类器具有有限标记的样本。 为了应对这种困难,我们建议构建森林导向的超像素(体素)来增加标准随机林分类器,其中超像素(体素)是基于森林的代码。 与最先进的技术相比,我们所提出的方法在具有挑战性的2D / 3D生物医学图像上表现出卓越的分割性能。 完整的实现(基于MATLAB)可在https://github.com/lingucv/ssl_superpixels上获得。

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